IoT Solutions with Artificial Intelligence Technologies for Precision Agriculture: Definitions, Applications, Challenges, and Opportunities
Abstract
:1. Introduction
2. Related Work
2.1. IoT in Agriculture
2.2. AI in Agriculture
2.3. Existing Research Gap
3. Methodology
3.1. Identification
IoT Keywords | AI Keywords | Agriculture Keywords |
---|---|---|
internet of things | artificial intelligence | precision agriculture |
IoT | artificial-intelligence | agric * |
machine learning | agro * | |
machine-learning | fish * | |
deep learning | crop * | |
deep-learning | farm * | |
neural networks | plant * | |
neural-networks | animal * | |
classif * | ||
predict * | ||
monitor * | ||
forecast * | ||
estimat * | ||
algorithm * |
3.2. Screening
3.3. Inclusion
3.4. Bias Risk and Limitations
3.5. Data Analysis Plan
4. Results
4.1. Overview of Findings
4.1.1. Sources and Publications
4.1.2. Trends in Publication over Time
4.1.3. Journals versus Conferences
4.1.4. Global Contribution
4.1.5. Number of Pages, Sources, and Types
4.1.6. Keyword Insights
4.2. Definitions Identified in the Literature
5. Discussion
5.1. Agricultural Applications
5.1.1. Forms of Agriculture
- Crop Production
- Animal Husbandry
- Aquaculture
- Hydroponics and Aquaponics
- Other forms of Agriculture
5.1.2. Stages of Agriculture
- Growth Stage
- Harvest Stage
- Post-harvest Stage
- Pre-harvest Stage
- Sowing Stage
- Seed Selection Stage
- Infancy Stage
- All Stages
5.1.3. Agricultural Practices and Challenges Addressed
- Automation and Monitoring in Agriculture
- Soil Health and Nutrient Management
- Crop Disease Detection and Management
- Water Management and Irrigation Efficiency
- Pest Control and Integrated Pest Management
- Smart Farming and Digital Agriculture
5.2. IoT Components
5.2.1. Monitoring and Control Components
5.2.2. Computation Components
5.2.3. Communication Components
- Wi-Fi Modules
- LoRa (Long-Range) Modules
- GSM/GPRS Modules
- Bluetooth Modules
- ZigBee Modules
- NB-IoT Modules
5.2.4. Reporting Components
5.3. AI/ML Algorithms
5.3.1. Types of Algorithms Used
- Machine Learning Methods
- Deep Learning
5.3.2. Kinds of Data Used
- Tabular Data
- Time Series Data
- Scalar Data
- Image Data
- Statistical Data
Kind of Data | Description | Usage Examples |
---|---|---|
Tabular Data | Structured data organized in rows and columns, commonly found in databases or spreadsheets. | Soil health monitoring [136,193,215] Crop yield prediction [109,124,196] Water quality monitoring [216] |
Time Series Data | Sequential data points ordered over time, such as weather or environmental observations. | Anomaly detection [159] Soil parameter prediction [180,217] Pest incidence forecast [143] Animal disease detection [218] |
Scalar Data | Single numerical values, representing a single quantity or attribute. | Smart greenhouse farming [94] Crop irrigation [219] |
Image Data | Multidimensional arrays of pixel values, used to represent visual information in the form of images. | Weed detection [220], disease prediction [72,187,221,222], and flow meter reading [157] Insect monitoring by image classification [182] Crop water status estimation [223] |
Statistical Data | Data resulting from statistical processes are often used for analysis and inference. | Detection and monitoring of burning residue of paddy crops [224] |
Audio Data | Representations of sound, typically in the form of waveforms. | Audio recording for raven detection [225] Audio clip for pig farm solution [208] |
- Audio Data
5.3.3. Evaluation Methods Used
- Accuracy
- Error/Loss-Related Metrics
- Precision and Recall
- F-Score
- Correlation-Related Measures
- Confusion Matrix Analysis
- Time Complexity
- Specificity-Related Measures
- ROC Score and AUC
5.4. IoT-AI/ML Complementarity
5.4.1. Impact of IoT Weaknesses on AI/ML Models
5.4.2. Impact of IoT Strengths on AI/ML Models
5.4.3. Impact of AI/ML Weaknesses on IoT
5.4.4. Impact of AI/ML Strengths on IoT
5.5. Identified Research Opportunities/Future Work
5.5.1. Agriculture Opportunities
- AI/ML for Crop Monitoring and Management
- Smart Irrigation Systems
- Cattle Monitoring and Health Management
5.5.2. IoT Opportunities
- Challenges in IoT Integration
- Sensor Fusion and Fast Terrain Sampling
- Autonomous IoT Systems
5.5.3. AI/ML Opportunities
- Hybrid Deep Learning Models
- Decision Tree Analysis for Beehive Monitoring
- Leader-Based Optimization in Weed Detection
5.5.4. Future Directions
- Scalability and Interoperability
- Citizen-Centric Participation
- Environmental Impact Assessment
- Cross-Domain Integration
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
ACM | Association for Computing Machinery |
AI | Artificial Intelligence |
AUC | Area Under Curve |
APAE | Analytical Prediction Algorithm using Estimations |
BLE | Bluetooth Low Energy |
CNN | Convolutional Neural Network |
DNN | Deep Neural Network |
DOAJ | Directory of Open Access Journals |
FQ | Focused Question |
GRNN | General Regression Neural Network |
GSM | Global System for Mobile Communications |
GPRS | General Packet Radio Service |
GPUs | Graphics Processing Units |
IEEE | Institute of Electrical and Electronics Engineers |
IoT | Internet of Things |
IPM | Integrated Pest Management |
KNN | K-Nearest Neighbor |
LD | Linear dichroism |
LOF | Local Outlier Factor |
LoRa | Long-Range |
LSTM | Long Short-Term Memory |
MCC | Monitoring and Control Components |
MDPI | Multidisciplinary Digital Publishing Institute |
MFCC | Mel-Frequency Cepstrum Coefficients |
ML | Machine Learning |
MSE | Mean Squared Error |
PA | Precision Agriculture |
PCA | Principal Component Analysis |
PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
PSO | Particle Swarm Optimization |
R-CNN | Region-Based CNN |
RFID | Radio Frequency Identification |
RMSE | Root Mean Square Error |
RNN | Recurrent Neural Network |
ROC | Receiver Operating Characteristic |
RSSI | Received Signal Strength Indicator |
SLAM | Simultaneous Localization and Mapping |
SQ | Statistical Question |
SVM | Support Vector Machine |
SVMR | Support Vector Machine Regression |
TLA | Three-Letter acronym |
TPUs | Tensor Processing Units |
UAV | Unmanned Aerial Vehicle |
Appendix A. Paper Identification
Databases/Websites and Queries
Database | Query | Reason for Modification |
---|---|---|
Scopus Queried: 17 November 2023 | ALL ((“machine learning” OR “machine-learning” OR “deep learning” OR “deep-learning” OR “artificial intelligence” OR “artificial-intelligence” OR “neural networks” OR “neural-networks” OR “classif* ” OR “predict*” OR “monitor*” OR “forecast*” OR “estimat*” OR “algorithm*”) AND (“IoT” OR “internet of things”) AND (“precision agriculture” OR “agric*” OR “agro*” OR “fish*” OR “crop*” OR “farm*” OR “plants” OR “animal*”)) 1 | No major modification to query. |
ACM Queried: 22 November 2023 | (“machine learning” OR “machine-learning” OR “deep learning” OR “deep-learning” OR “artificial intelligence” OR “artificial-intelligence” OR “neural networks” OR “neural-networks” OR “classif*” OR “predict*” OR “monitor*” OR “forecast*” OR “estimat*” OR “algorithm*”) AND (“IoT” OR “internet of things”) AND (“precision agriculture” OR “agric*” OR “agro*” OR “fish*” OR “crop*” OR “farm*” OR “plants” OR “animal*”) 1 | No major modification to query. |
IEEE Queried: 17 November 2023 | (“machine learning” OR “machine-learning” OR “deep learning” OR “deep-learning” OR “artificial intelligence” OR “artificial-intelligence” OR “neural networks” OR “neural-networks” OR “classif*” OR “predict*” OR “monitor” OR “forecast*”OR “estimate“ OR ”estimation“ OR “algorithm”) AND (“IoT” OR “internet of things”) AND (“precision agriculture” OR “agric*” OR “agro*” OR “fish*” OR “crop*” OR “farm*” OR “plants” OR “animal*”) 1 | Total number of query wildcards limited to 9. |
ScienceDirect Queried: 17 November 2023 | (“machine learning” AND (“IoT” OR “internet of things”) AND (“agriculture” OR “fish” OR “crop” OR “farm” OR “plants” OR “animal”)) OR | Allows fewer boolean connectors (max 8 per field). Wildcards ‘*’ are not supported. As a result, all wildcards were removed. (“deep learning” AND (“IoT” OR “internet of things”) AND (“agriculture” OR “fish” OR “crop” OR “farm” OR “plants” OR “animal”)) OR (“artificial intelligence” AND (“IoT” OR “internet of things”) AND (“agriculture” OR “fish” OR “crop” OR “farm” OR “plants” OR “animal”)) OR (“neural networks” AND (“IoT” OR “internet of things”) AND (“agriculture” OR “fish” OR “crop” OR “farm” OR “plants” OR “animal”)) OR (“classification” AND (“IoT” OR “internet of things”) AND (“agriculture” OR “fish” OR “crop” OR “farm” OR “plants” OR “animal”)) OR ("prediction" AND (“IoT” OR “internet of things”) AND (“agriculture" OR “fish” OR “crop” OR “farm” OR “plants” OR “animal” )) OR (“monitor" AND ( “IoT” OR “internet of things” ) AND (“agriculture” OR “fish” OR “crop” OR “farm" OR “plants” OR “animal” )) |
GoogleScholar Queried: 17 November 2023 | allintitle: (“machine learning” OR “machine-learning” OR “deep learning” OR “deep-learning” | Search options include title-search or search everywhere. Searching everywhere returned too many results, so title-search was used. OR“artificial intelligence” OR “artificial-intelligence” OR “neural networks” OR “neural-networks” OR “classif*” OR “predict*” OR “monitor*” OR “forecast*” OR “estimat*” OR “algorithm*”) AND (“IoT” OR “internet of things”) AND (“precision agriculture” OR “agric*” OR “agro*” OR “fish*” OR “crop*” OR “farm*” OR “plants” OR “animal*”) 1 |
Appendix B. Paper Inclusion
List of Included Papers
Ref. | Agricultural Concern 1 | IoT Components 2 | AI/ML Algorithms 3 |
---|---|---|---|
1. | Crop Production | DHT11 Ambient Temperature and Humidity Sensor, Soil Moisture Sensor (SKU: 12251) | SVC, KNN, Logistic Regression |
[153] | Greenhouse Farming/High Cost of Labor and Energy Consumption | Arduino Uno, Cloud Server | Tabular, Scalar |
Growth/Smart Farming | SIM900 Wireless Broadband Router | Precision, Recall, Accuracy, F1-score | |
2. | Crop Production | DHT22 Temperature and Moisture Sensor, Soil Sensor | Random Forest, Decision Tree, KNN |
[82] | Farmer Assistance/Analyzing the Parameters Suitable to Crop Growth | Arduino UNO, ESP8266, Thingspeak | Tabular, Time Series, Scalar |
Post-Harvest/Periodic Inspection | ESP8266 Wi-Fi Module | Accuracy | |
3. | Aquaculture, Fish Farming | Sonar Camera, RGB Camera, Water Temperature Sensors, Water pH Sensor, Water Salinity Sensor, Water Velocity Sensor, Dissolved Oxygen Sensor | Mask R-CNN, YOLOv4, Multi-layer Perceptron, Principal Component Analysis (PCA), Adaptive Aggregation Network (AANet), Fast-Segmentation Convolutional Neural Network (Fast-CNN), Long Short-Term Memory (LSTM) Network, DBScan, I3D model, Optical flow |
[92] | Twin-based Intelligent Fish Farming/Automated Fish Feeding, Environment and Health Monitoring | Cloud Server | Tabular, Image |
Infancy, Growth/Fish Farming | Algorithm Evaluation | ||
4. | Crop Production | Unmanned Aerial Vehicle | Convolutional Neural Network |
[224] | detecting and Monitoring Burning Eesidue of Paddy Crops/Monitoring the Burning Residue of Paddy Crops, and Water Quality Monitoring in Real Time | Cloud Server | Image, Real Time, Statistical |
Growth/Other | Precision, Recall, Accuracy | ||
5. | Animal Husbandry | Temperature Sensor, Humidity Sensor, Animal Identification Device, Wind Direction Sensor, Cloud Level Sensor, Rain Quantity Sensor | Random Forest, Convolutional Neural Network, XGBoost |
[78] | Health Status Classification for cows/The Combination Information From Microenvironments, Macroenvironment and Cow’s Information in Supporting of the Classification | AWS Glue Workflow, S3 Bucket, SageMaker | Tabular, Time Series, Scalar |
Pre-harvest/Others | Accuracy, Precision, Recall, F1 score | ||
6. | Crop Production, Animal Husbandry | SV 38 V MEMS Triaxial Seat-Pad Accelerometers, SV 151 MEMS Accelerometer, SV 106 a Six-Channel Human Vibration Meter, SV 958 Four-Channel Sound, Vibration Analyzer | Linear Regression, Decision Tree Regressor, Support Vector Regression, Gaussian Process Regression, Artificial Neural Network |
[75] | Analyzing and Predicting Tractor Ride Comfort. Real-Time Monitoring and Fleet Management Applications/Improve Tractor Ride Comfort in Real Field Applications in Developing Countries, Comfort Optimization, Limited Access to Credit, Inadequate Infrastructure, Lack of Knowledge and Skills, Feeding a Growing Global Population | ESP8266 Microcontroller, Cloud Server | Tabular, Time Series |
Sowing, Growth, Harvest, Post-Harvest/Agricultural Machinery | RJ 45 port | R-square, Root Mean Square Error, MAE, Training Time | |
7. | Crop Production | UAV-Mounted Camera, LCD | GL-CNN |
[102] | Growth Prediction of Palm Tree plantings/Monitoring Growth and Predict the Plantings of Palm Tree By | Raspberry Pi, GPU | Tabular, Time Series, Image |
Growth/Periodic Inspection | USB | MAE, Accuracy, Precision, Recall, F1-Score | |
8. | Crop Production | DHT22/AM2302 Temperature and Relative Humidity Sensor, MHZ-19 CO Sensor | Multi-Layer Perceptron, Multiple Linear Regression |
[198] | Moisture Content and Carbon Monitoring in Real Time to Predict the Quality of Corn grain/Monitoring and Obtain the Equilibrium in Real Time | ESP8266 D1 Mini-Module, ThingSpeak | Tabular |
Post-Harvest/Periodic Inspection | Wi-Fi Module | R, R, MAE | |
9. | Aquaculture | RTD PT100 Temperature Sensor, SEN 0161 pH Sensor, SEN 0189 Turbidity Sensor | Deep Reinforcement Learning, Artificial Neural Network |
[130] | Aquaculture Monitoring System/Providing Efficiency in Accuracy of the Data Generated by the System and Reliability of Data That Can Be Accessed in Real Time | Arduino Uno R3, Firebase | Tabular |
Post-Harvest/Aquaculture Monitoring | Wi-Fi Module | MAPE, Accuracy, Precision, Recall, F1-Score | |
10. | Crop Production | DLPNIRNANOEVM NIR Sensor | Support Vector Machine, XGBoost, Deep Neural Network |
[199] | Real-Time Monitoring of Gluten Levels and Quality Control in Flour Production/Accurately Classifying Wheat Flour Using Near-Infrared Spectroscopy (NIRS) Technology | Raspberry Pi 4, NVIDIA GeForce RTX 2060 SUPER Graphic Card, AWS DynamoDB, AWS sagemaker | Tabular, Time Series, Scalar |
Post-Harvest/Others | Accuracy, F2-score, Training Time | ||
11. | Crop Production | pH Sensor, Rainfall Sensor, Soil Moisture Sensor, Temperature Sensor, UAV Sensor Nodes, Vehicular Sensor | Decision Tree, KNN, SVM, Naive Bayes, Majority Voting |
[79] | Ad-hoc Network Ecosystem for Precision Agriculture/Low Latency Infrastructure in a Highly Sparse Network | Cloud Server | Tabular |
Growth/Other | F1-score | ||
12. | Crop Production | Temperature Sensor, Humidity Sensor, AM2305 Temperature and Humidity Sensor, AM2315 Sensor, Buzzer 5Vdc, Relay 5vdc, Water Flow Sensor, Mist Pump, Exhaust Fan, Roller Motor, Misting Fan | LSTM |
[206] | Smart Monitoring and Controlling of greenhouse/Predictions for the Environmental Conditions of the Innovative Greenhouse | Web Server, Node-Red Cloud Server | Tabular, Time Series, Scalar |
Growth/Greenhouse | D1 Mini Pro | ||
13. | Crop Production | Soil Sensor, Weather Station, Surveillance Camera | Random Forest |
[103] | Rice Growth Stage Classification /The Transition of Life Cycle of Paddy Rice Is Challenging to Determine Manually | Raspberry Pi, Amazon S3 cloud, AWS Cloud Server, Google Colab Pro | Tabular, Time Series |
Growth/Periodic Inspection | Confusion Matrix, Accuracy, F1-Score | ||
14. | Aquaculture | Go Pro Stereo Camera, Sonar Camera, Calibration Checkboard | Mask RCNN, Gaussian Mixture Modeling, KNN Regression, CNN |
[131] | Underwater Smart Sensor Object/Monitor the Fish in Real Time to Assess the Wellness of the Fish | NVIDIA GeForce RTX 3090 GPU, Cloud Server | Image |
Harvesting/Health Monitoring | Confusion Matrix | ||
15. | Crop Production | DHT22 Temperature, MTS420 Sensor and Humidity Sensor | Linear Regression |
[234] | Utilizing Precision Agriculture in Predicting Apple Disease/ | MTS420 Sensor Board | Tabular |
Growth, Harvest/Precision Agriculture | IRIS 2.4 GHz Module | ||
16. | Crop Production | F-28 Soil Moisture, HPT675 Water Level Sensor, THERM200 Soil Temperature Sensor, HTM2500LF Humidity Temperature Transducer, SHT11 Soil Moisture, Digital Inclinometer | KNN, Reinforcement Learning |
[219] | Banana Irrigation and Scheduling System/Water Optimization and Predict the Environmental Status of Crop Field | Raspberry Pi | Tabular, Scalar |
Growth/Irrigation | M2M (ZigBee) | Spearman Correlation, Coefficient of Determination (R), Root Mean Square Error (RMSE) | |
17. | Animal Husbandry | MPU-9250 IMU, RFID Tag, RFID Reader | Gaussian Mixture Model |
[158] | Dairy Cows Localization and Activity detection/The Activity Sensors to Monitor Several Events in Real Time, Increasing Productivity of Farms, Continuous Control of Animals and Production Systems | ESP32 MCU, STM32F103-ARM microcontroller | Kinds of Data |
Growth/Precision Livestock Farming | Wi-Fi 802.11 Transceiver, RFID Antenna | Accuracy, Precision, Sensitivity, Specificity | |
18. | Animal Husbandry | DHT22 AM2302, DHT11, DHT12, GY-521 MPU-6050 MPU6050, Module 3 Axis Analog Gyro Sensors, SON1205 Heart Rate Sensor | LightGBM (Light-Gradient-Boosting Decision Tree) |
[127] | Cattle Health Monitoring Systems/Predict Cattle Health in Real Time | Cloud Server, Web Server, Mobile Node | Tabular, Time Series |
Growth/Cattle monitoring | R-Squared, Absolute Loss, Squared Loss, Root-Mean-Square-Loss | ||
19. | Crop Production | Relay, Water Pump, Temperature Sensor | Random Forest |
[124] | Crop and Yield Forecasting/Predict Crop and Yield Productivity | Microprocessor, Firebase | Tabular |
Growth, Harvesting/Yield prediction | Wi-Fi Module | Accuracy | |
20. | Animal Husbandry | DS18B20 Dallas Body Temperature Sensor, Pulse Sensor, ADXL345 3-Axis Accelerometer | Logistic Regression |
[117] | Livestock Monitoring/Disease Prevention and Control | ESP-8266 Node MCU, Google Sheets | Tabular |
Growth/Periodic Health and Activity Monitoring, Reproduction Management | ESP-8266 Wi-Fi Module | Accuracy, Precision, F1-Score | |
21. | Crop Production | Temperature Sensor, Humidity Sensor, Rain Sensor, Pressure Sensor, CO Sensor | Unspecified |
[240] | Rice Blast detection/Detecting and Managing Rice Blast Disease in Rice Crops | Cloud Server | Image |
Growth, Harvest/Periodic Inspection | Training Accuracy, Validation Accuracy | ||
22. | Crop Production | pH Sensor, Temperature Sensor (DS18B20), Electric Conductivity Sensor, ADC1115 | DNN Classifier, Multi-Layer Perceptron |
[216] | Water Quality Monitoring System/The Lack of Continuous Monitoring of Quality of Groundwater | ESP8266 NodeMCU 1.0, Cloud Server | Tabular |
Growth/Irrigation | Gateway, ESP8266 Wi-Fi Module | Accuracy | |
23. | Crop Production | DHT11 Humidity Sensor, Soil Sensor, Active Buzzer, IR Sensor, Relay, Water Pump | Random Forest, Neural Network, CNN |
[241] | Crop Monitoring and management/Forecast the Appropriate Crops | ESP32 MCU, Firebase, Web Server | Image |
Growth, Harvest/Irrigation | ESP32 Wi-Fi Module | Algorithm Evaluation | |
24. | Aquaculture | Servo Motor, LCD, WebcamWater Pump, DC Motor | Decision Tree, ANN (Feed-Forward Neural Network) |
[200] | Assessment and Prediction of nitrite/Manually Assessment of Nitrite | Cloud Server, Raspberry Pi 3, Google Colab Platform | Tabular |
Growth/Aquaculture | Wi-Fi Router, Wi-Fi Module | Accuracy | |
25. | Crop Production | Digital Camera, Ultrasonic Sensor, Speaker | VGG-16, CNN, Logistic Regression, Light Gradient Boosting, Random Forest |
[207] | Fruit Freshness Detecting System/Discover the Quality of Fruit | Raspberry Pi | Image |
Harvest/Fruit Quality Monitoring | F1-Score, Recall, Precision, Accuracy, Confusion Matrix, ROC Score | ||
26. | Crop Production | DHT11 Temperature and Humidity Sensor, Rain Gauge, LDR, Anemometer, | LSTM |
[114] | IoT-Based Climate prediction/Management of Farmers Agricultural Land by Producing Climate Type and Crop Planning | ESP32 Microcontroller, Database Server, Cloud Server | Tabular |
Growth/Climate prediction | Root Mean Square Error, R, Loss | ||
27. | Crop Production | Low-Resolution Camera, Lora Vision Shield | Tiny Ml Paradigm (Faster Objects, More Objects) |
[179] | Smart Sensor for Energy saving/Smart Intelligent Sensor for Fruit Harvesting and Fertilizer | Cloud Server, Arduino Portenta H7 Microcontroller | Image |
Harvesting/Precision Agriculture | LoRaWan Communication Module, Laird RG1868 Gateway | Accuracy | |
28. | Animal Husbandry | 555 Timer, N-Channel MOSFET, 8V Audio Amplifier, High Frequency Acoustic Device, CCTV Camera | YOLO v5 |
[150] | Track locust intrusion/Preventing and Tracking Locust Intrusion in Real Time Detection | Arduino Atmega | Image |
Pre-Harvest/Pest Management | Precision, Recall, Mean Average Precision | ||
29. | Crop Production | GYJ-0154 Motor Driver, KM-37A535 Motor, MDU-1049 Motor Driver, LM2596 DC-DC Converter, PB-1300-3AR3 AC-DC Adapter, Temperature Sensor, Humidity Sensor, CO Sensor, Light Intensity Sensor | Fuzzy Logic, Neural Network, Neural Fuzzy |
[242] | Prediction of Growth, Harvest Day, and Quality of Lettuce Crops in a Hydroponic Environment /Establishment of Suitable Growth Models for Greenhouse Applications | ATmega328p, Raspberry Pi 3 Model B, | Tabular, Image |
Post-Harvest Stage /Greenhouse | CC2530 ZigBee Module, Wi-Fi Module | Root Mean Square Error, R | |
30. | Crop Production | pH Sensor, Ambient Temperature Sensor, Temperature Sensor | Tree Regressor, ANN, XGBoost, Support Vector Regression, Random Forest |
[76] | Smart Farming System for Coffee farms/Fully Implemented and Validated for Smart Farming | Raspberry Pi 3 Model B, Cloud Server | Kinds of Data |
Pre-Harvest, Growth/Periodic Inspection | Gateway | Pearson Correlation, Root Mean Square Error, MAE, Relative Squared Error (RSE) | |
31. | Crop Production, Animal Husbandry | ArduCam OV5647 5Mpx Camera | CNN |
[149] | Varroosis Detection/Constantly Monitor Beehives and Analyze the Video Data Stream in Real Time | Raspberry Pi, Google Coral USB Accelerator | Image |
Pre-Harvest/Pesticide | GSM Modem | F1-Score, Confusion Matrix, Precision, Sensitivity | |
32. | Animal Husbandry | DHT22 Ambient and rElative Humidity Sensor, RC-4HC Ambient Temperature and Relative Humidity Sensor, JY901B 9 Axis Accelerometer Gyroscope Sensor, DT-178A Vibration Sensor | GRNN, Backpropagation Neural Network, Elman Neural Network |
[235] | Predicting Mutton Sheep stress/Enhancing the Quality of Prediction Relationship Between Environmental Factors and Stress | Tabular | |
Growth/Periodic Inspection | Fitting Coefficient, Absolute Errors, Relative Error | ||
33. | Crop Production | Laser Radar (LIDAR), 9-Degrees-of-Freedom Inertial Measurement Unit (9DoF IMU), RGB Camera | CNN |
[243] | Wearable Edge AI Technology to Monitor and Analyze Ecological Environments for Various Agricultural purposes/Applying Machine Learning Tools in a Wearable Edge AI | Raspberry Pi Zero W, Raspberry Pi 3B, Raspberry Pi 3B+, Jetson Nano (5 W Mode), Jetson Nano (20 W mode) | Image |
Growth/Monitoring | Precision, Recall, F1-score | ||
34. | Crop Production | DHT11 Temperature Sensor, HX711 24-bit ADC Converter, LoRa E32 TTL 433 MHz, Photo-Resistor, IC 74HC151, IC 74HC595 | Linear Regression |
[190] | Wireless Sensor Networks and Machine Learning for Climate Change prediction/Accurate Predictions of Future Sand Movement in Specific Region and Adapting Climate Condition | ESP8266 Node MCU, ATmega 328P-AU MCU, Web Server | Tabular, Time Series |
Growth/Periodic Inspection | ESP8266 Node Wi-Fi Module | MAE | |
35. | Crop Production | Relay, Water Pump, Soil Moisture Sensor, NKP Sensor | Random Forest, LGBM, KNN, Decision tree, XGBoost, CNN (VGG-16) |
[148] | Multimodal Precision Farming System/Lack of Access to Basic Farming-Related Information, Such as Fertilizer Doses | Node MCU, Arduino IDE, Firebase, Web Server | Tabular, Image |
Pre-Harvest, Growth/Fertilizer | Precision, Recall, Accuracy, F1-Score | ||
36. | Crop Production | Soil pH Sensor, Soil Moisture Sensor, Soil NPK Sensor, DHT11 Ambient Temperature and Humidity Sensor, Color Sensor (GY- 31 TCS3200) | Random Forest, CNN, Decision Tree |
[197] | A Virtual Assistant to Maximise Crop Yield/Decision Support System Aided With Recommendation | Arduino UNO, NodeMCU ESP8266, Google Sheets | Image, Time Series |
Growth/Monitoring | NodeMCU ESP8266 Wi-Fi Module | Accuracy, Precision, Recall, F1-Score, Confusion Matrix | |
37. | Crop Production | RGB Camera | Brute Force Algorithm, RANSAC |
[244] | Detecting the Freshness of vegetables/Periodic Inspection Studies of Freshness Monitoring | Arduino | Image |
Post-Harvest/Fruit Management | Accuracy | ||
38. | Crop Production | DHT-22 Temperature and Humidity Sensor, MQ-135 Voltage Sensor, LDR Luminous Intensity Sensor | ANN (Forward Propagation Neural Network) |
[146] | Low-Cost Viticulture Stress Framework/Remote Real-Time Monitoring and Detect Viticulture Stress | Firebase | Tabular |
Post-Harvest/Periodic Inspection | ESP-WROOM-32 Module | Accuracy, Precision, Recall, F1-Score | |
39. | Crop Production | Temperature and Air Humidity Sensor, Temperature and Leaf Moisture Sensor, Soil Moisture Sensor, Resistive Soil Moisture Sensors, Pyranometer and UV (Preferably UVA or UVB) Sensor, Leaf Wetness and Digital Caliper Pack | Support Vector Classification, CNN |
[245] | Low-Cost Viticulture Stress Framework /Managing Stress Factors Affecting Table Grape Varieties | Vity-Stress Concentrator, MCU | Image |
Growth/Vine Stress Monitoring | BLE Wi-Fi Transponder, USB 3G/4G Dongle | ||
40. | Crop Production | Water Level Sensor, pH Sensor, Temperature and Humidity Sensor, Ground Temperature and Moisture Sensor, Solar Radiation Sensor, Conductivity Sensor, Wind Direction Sensor, Wind Speed Sensor | Support Vector Machine, Linear Regression, Random Forest, ANN |
[246] | Acer Mono Sap Integration Management Based on Energy Harvesting Electric/Monitoring and Optimizing Sap Collection Processes in Acer Mono Trees | External Server | Tabular |
Harvest/Sap Integration Management | Network Module, Gateway | Precision, Recall, Accuracy | |
41. | Crop Production | RFID Gate, ALR-9900+ RFID Reader, RFID Tag | XGBoost |
[86] | Enhance the Efficiency and Effectiveness of RFID-Based Traceability Systems for Perishable Food/Food Safety and Quality Standards in the Food Industry | Web Server | Tabular |
Post-Harvest/Perishable Food Handling | Linear Antenna ALR-9610-AL | Accuracy, Precision, Recall, F1-score | |
42. | Crop Production | MicroNIR PAT-W Sensor, MicroNIR PAT-U Sensors, Electric Motor, Screw Conveyor | PLS (Partial Least Squares) Regression |
[236] | Analytical Approach for Common Wheat/Predicting the Issues About the Product Characteristics and Loss of Final Product | Cloud Server | Tabular |
Post-Harvest/Other | R, Root Mean Square Error | ||
43. | Crop Production | LED, Camera, Magnetic Sensor | CNN, Backpropagation Neural Network |
[247] | Feed Chain in Olive Pitting, Slicing and Stuffing Machines/The Minimum Error of Traditional Systems Are Impossible to Remove | Dropbox, CM1K chip, Industrial PC | Image |
Post-Harvest/Other | Confusion Matrix | ||
44. | Crop Production | Temperature Sensor, Soil Moisture Sensor, Variable Rate Sprayer | Kalman Filter Algorithm |
[94] | Distributed Misbehavior Detection in Smart greenhouse/Misbehavior Detection Approach to Detect Misbehaving Sensing Nodes | Arduino Uno | Scalar |
Growth/Smart Green House | Wireless Module | ROC, AUROC | |
45 Other | Crop Production | ATMOS 41, GS3 (Soil Temperature, Conductivity and Dielectric Permittivity) Sensor | Fuzzy Rule Base |
[248] | Precision Agriculture, Open Field Agriculture/High Installation and Maintenance Cost | Cenote Platform | Tabular |
Growth/Irrigation | Gateway | ||
46. | Crop Production | Raspberry Pi Camera Module Rev 1.3, DS18B20 One Wire Temperature Sensor, YL-38 Soil Moisture Sensor, AM2301 Humidity Sensor | ANN-Multi lAyer Perceptron |
[221] | Detection of Sigatoka Disease in Plantain | Raspberry Pi 3, ThingSpeak Platform | Image |
Growth, Harvest/Other | Confusion Matrix | ||
47. | Crop Production, Animal Husbandry | DHT11 Moisture and Temperature Sensor, Pi Camera Module, IR Break Beam, Davis Anemometer | Inception v3 |
[72] | Automated Pest Monitoring for Fall Armyworm/Manual Pest Inspection | Raspberry Pi 3 Model B+, Arduino Uno | Image |
Growth/Pesticides | Quectel EC25 Mini PCIe 4G/LTE Module | Accuracy | |
48. | Animal Husbandry | Intel RealSense Camera | TinyYOLO With Image Processing Techniques (GMM, Binarization With Othsu, and Connected Component) |
[128] | Monitoring Individual Pigs Without Human Inspection | Embedded GPU | Image |
Growth/Periodic Inspection | Pixel-Level Accuracy | ||
49. | Animal Husbandry | Ambient Temperature Sensor, Humidity Sensor, Ammonia Sensor, Carbon Dioxide Sensor, Hydrogen Sulfide Sensor, Entrance Monitoring Sensor, Exit Monitoring Sensor, RFID Identity Recognizer | Unspecified |
[249] | Precision Livestock Farming/Remotely Provide Accurate Feeding Information | Core Processor | Tabular, Time Series |
Growth/Feed Management | Wireless Transmision Module | Unspecified | |
50. | Crop Production, Animal Husbandry | DHT22 Temperature and Humidity Sensor, Barometric Pressure Sensor, Ambient Light Sensor, Dual-Axis Accelerometer Sensor | Convex Hull Algorithm |
[88] | Cloud-Integrated Farming /Increasing the Crop Yield Without Human Intervention | MTS420 Sensor Board | Image |
Growth/ | Zigbee Module, IRIS Mote, Gateway | Periodic Inspection | |
51. | Crop Production | Monitoring/Control Components | Linear Regression |
[73] | Precision Agriculture Using Iot and Machine Learning/Predict the Apple Scab as the Common Disease for Apple Crop | Computation Components | Tabular |
Growth/Irrigation, Pest Management | Communication Components | Algorithm Evaluation | |
52. | Crop Production | Temperature Sensor, Wind Sensor, Rain Sensor, Electrical Conductivity Sensor, Humidity Sensor, Radiation Sensor, Carbon Dioxide Sensor, Direction Sensor, and Wind Speed Sensor, RGB Camera | Random Forest |
[126] | Continous Assessment of Crop Quality/Combining Monitoring and Automated Actions During Crop Growth | Tabular | |
Growth/Periodic Inspection | Mean Squared Error (MSE) | ||
53. | Crop Production | Soil Moisture Sensor, Humidity Sensor | Google Inception v2 |
[250] | Crop Growth and Disease Monitoring/Lack of Access to Information About Crop Health | Node MCU, Firebase Cloud Firestore, Heroku | Image |
Growth, Harvest/Disease Monitoring | Accuracy | ||
54. | Animal Husbandry | Pi Camera V2 Module, LED Lights | R-CNN, Single Shot Multibox Detection |
[74] | Crop Protection Against Animal Intrusion/Crop Loss | Raspberry Pi 4 | Image |
Sowing, Growth/Periodic Inspection | ESP8266 Wi-Fi Module | Mean Average Precision (MAP) | |
55. | Crop Production | DC Motor, Relay Module, DHT11 Temperature and Humidity Sensor, Relay Module, 5V Water Pump | CNN |
[106] | Automatic Irrigation and Crop Monitoring System/Manual Disease Monitoring and Conventional Irrigation Methods | ESP8266 NodeMCU | Image |
Growth, Harvest/Irrigation | |||
56. | Crop Production | Soil NPK Sensor, Soil pH Sensor | SVM, KNN Classifier, Decision Tree |
[118] | Intelligent IoT-Based Combined Crop-Type and Disease Prediction/Predict Crop Yields and Detect Illness in Crops | Arduino Uno, Raspberry Pi, Azure IoT hub | Tabular, Image |
Growth/Periodic Inspection | Wi-Fi Module | Accuracy, Precision, Recall, F1-Score | |
57. | Crop Production | Soil Moisture Sensor, LED Display, Solenoid Valve, Switch, LED | ANN, Fuzzy Logic, SVM |
[196] | Soil Dampness | Arduino Mega, Personal Computer | Tabular |
Growth/Precision Agriculture | GSM SIM 800L | MSE, Accuracy (R Squared) | |
58. | Crop Production | Soil Moisture Sensor, Raindrop Sensor | Decision Tree |
[113] | Agricultural Crop Recommendation/Provide Tailored Crop Recommendations That Optimize Resource Usage | Arduino UNO R3, ESP8266(NodeMCU) Module, Raspberry Pi | Tabular |
Growth/Crop Management | ESP8266 Wi-Fi Module | ||
59. | Crop Production | Soil Moisture Sensor, Solenoid Valve | Unspecified |
[251] | Watering Intelligently With Distributed Optimization/Applying the Correct Amount of Moisture to the Area | Raspberry Pi Zero | Time Series |
Growth/Irrigation | Unspecified | ||
60. | Crop Production | BME280 Pressure, Humidity and Temperature Sensor, RGB Camera, Hyperspectral Camera (Cubert Ultris 5) | YOLO v7 |
[252] | Autonomous Growth for Space Farming/Human Intervention | NVIDIA Jetson AGX Orin, Raspberry Pi 4 | Image |
Growth, Harvest/Periodic Inspection | Wi-Fi Module | ||
61. | Crop Production | LCD Display, DHT22 Temperature and Humidity Sensor (AM2302 or RHT03) | TinyML |
[227] | Tiny Ml-Based System/High Cost of Monitoring | ATSAMD51-Based Wio Terminal | Kinds of Data |
Growth, Harvest/Other | Realtek RTL8720DN-Powered Bluetooth and Wi-Fi Module | ||
62. | Crop Production | Smart Sensors | Federated Learning (Amendable Multi-Function Sensor Control) |
[96] | MUlti-Function Control for Smart Sensor/The High Computation Creates Actuation Lag and Reduces Analysis Rate | Cloud | Tabular |
Growth/Other | Algorithm Evaluation | ||
63. | Aquaculture | Temperature Sensor, Dissolved Oxygen Sensor, pH Sensor, Turbidity Sensor, Ammonia Sensor | Unspecified |
[89] | Planetary Digital Twin/Deploying a Virtual Digital Replica of Aquaculture to Control Essential Water Quality Variables | ESP32 MCU, Arduino, Cloud Server | Time Series |
Growth/Precision Agriculture | SX1276 LoRa tRansceiver Module | Unspecified | |
64. | Crop Production | Soil NPK Sensor, DHT22 Temperature and Humidity Sensor, Illuminance Sensor, Human Induction Sensor, Raindrop Sensor | Inception v3, Mobilenet v3, VIT Network |
[98] | Front and Rear End Separation Architecture/Lack of Intelligent Processing of Data | Raspberry Pi 4B | Time sEries, Scalar |
Growth/Smart Agriculture | NB-IoT Module | Accuracy | |
65. | Aquaculture, Fish Farming | pH Sensor, Electrical Conductivity Sensor, Total Dissolved Solids Sensor, Dissolved Oxygen Sensor | CNN |
[108] | Fish Farming/Measuring In Real Time of Water Quality | Arduino Mega, ESP32, ThingSpeak | Image |
Growth/Periodic Inspection | ESP32 Wi-Fi Module | ||
66. | Crop Production | DHT11 Sensor | LSTM |
[195] | Smart Gardening System/Traditional Approach Relies on Continuous Data From the Field | Raspberry Pi, Arduino UNO, ThinkSpeak Server | Time Series |
Growth/Periodic Inspection | LoRa Radio RYLR896 Module, LoRa Gateway Wireless Module | MSE | |
67. | Crop Production | Temperature, and Humidity Sensor (DHT11), Soil Moisture Sensor | MLP, Random Forest, SVM, Adaboost, Gradient Boosting, XGBClassifier |
[152] | Optimized Smart Irrigation System/Increase Crop Production and Dealing With Water Distribution Problems | ESP8266 NodeMCU, ThinkSpeak Cloud | Tabular |
Growth/Irrigation | NodeMCU Wi-Fi | Confusion Matrix | |
68. | Crop Production | Air Temperature and Humidity Sensor, Solar Radiation Sensor, Atmospheric Pressure Sensor, Soil Temperature and Humidity Sensor, Leaf Moisture Sensor, Precipitation Sensor, Soil Oxygen Level Sensor, Wind Speed and Direction Sensor | CNN |
[222] | Disease Detection /The Disease Can Affect the Vineyard Easily | Libelium Smart Agriculture Smart Agriculture Extreme | Image |
Growth/Periodic Inspection | Wi-Fi Module, 3G/4G Module | Algorithm Evaluation | |
69. | Animal Husbandry | PIR Sensors, Buzzer, Soil Moisture Sensor | YOLO v5 |
[253] | IoT Solutions for Ungulates Attacks/Low Cost Agricultural Field Protection | Cortex- A72 Raspberry Pi 4 B | Image |
Infancy, Growth/Other | Accuracy | ||
70. | General Agriculture | Farming Sensors, Actuator Controllers | Hybrid CNN and LSTM |
[140] | Anomaly Detection for Electric Energy Consumption/Traditional Detection of Power Anomalies | IoT Talk Engine, Data Talk, Altalk | Tabular, Time Series |
Post-Harvest/Other | MAE, MSE, Root Mean Square Error, MAPE | ||
71. | Crop Production | RS 485 Ultrasonic Water Level Sensor, Water Pump | Linear Regression, Random Forest |
[135] | IoT-Based Smart Farming/Smart Irrigation Services Based on Water Level Prediction | Cloud Server | Tabular, Time Series |
Growth/Irrigation | Wi-Fi Module | Precision, Recall, Accuracy, F1-score | |
72. | Crop Production | PIR Sensor, FC-28 Soil Moisture Sensor, Relay, Buzzer | CNN, AlexNet |
[116] | Intelligent Agriculture/Identifying Leaf Diseases of Different Plant Diseases in Their Early Stages | ESP8266 NodeMCU, Blynk App | Image |
Growth/Periodic Inspection | Wi-Fi Module | Confusion Matrix, Precision, Recall, F-Measure | |
73. | Crop Production | DHT11 Temperature and Humidity Sensor, Soil Moisture Sensor, Driver Module, DC Motor | Random Forest Regression |
[194] | Smart Farm Android Application/Remote Monitoring | Node MCU, Heroku Cloud Platform, Web Server | Tabular |
Growth/Other | ESP32 Wi-Fi Module | R Score | |
74. | Crop Production | DHT-22 Sensor, MQ-135 (CO ppm) Sensor, LDR Sensor | KNN, SVM, Random Forest |
[80] | Environmental Tracking System/Climate Change Lead to Inefficient Crop Production | Arduino Uno, SIM7000E Module | Tabular |
Growth/Other | LoRa Module | Confusion Matrix | |
75. | Crop Production | Buzzer, LED lights, Pi Camera | R-CNN, Multiple Support Vector Machine, Linear Regression |
[191] | Smart Crop Protection Against Animal Interference/Animal Intrusion | ESP8266 Node MCU, Raspberry Pi 4, Firebase Cloud | Image |
Growth/Other | ESP8266 Wi-Fi Module | Confusion Matrix | |
76. | Animal Husbandry | Wearable Inertial Sensor | KNN, SVM |
[81] | Behavior Monitoring System Based on Wearable Inertial Sensors/Early Detection of Health Issues and Timely Intervention | STM32L051 Microcontroller | Tabular |
Growth/Periodic Inspection | Flash Memory | Accuracy, Sensitivity, Precision, F1-Score | |
77. | Crop Production | Sonoff GK- 200MP2-B IP Camera, Raspberry Pi-Based Camera Controller, Temperature Sensor, Pressure Sensor, Humidity Sensor, Ambient Light Sensor, U.V Light Sensor, Soil Moisture Sensor, Leaf Wetness Sensor | CNN |
[228] | Onset Disease Detection/Continuous Crop Monitoring Over a Period of Time | Amazon Web Services Cloud, Raspberry Pi | Image |
Growth/Periodic Inspection | Wi-Fi Access Point, SX1262 LoRa Transceiver | Accuracy | |
78. | Mushroom Farming | Temperature and Humidity Sensor, Commercial Off-the-Shelf Humidifier, RS485 (RGB LED Strip Controller) | Fuzzy Rule Base |
[67] | Mushroom Vertical Farming/Growing Crop in Controlled Indoor Environments | Jetson Nano, Firebase | Time Series |
Growth/Other | |||
79. | Crop Production | Temperature and Humidity Sensor (DHT22), Soil Moisture Sensor (SEN0193 v2.0), Rain Drop Sensor, Motor Starter, Solenoid Valve, CH340G | Random Forest |
[99] | Precision Agriculture/Reduce Human Efforts, Water Wastage, and Power Consumption | NodeMCU-ESP12E | Tabular |
Growth/Irrigation | ESP-12E Wi-Fi Module | Accuracy | |
80. | Crop Production | ADC Converter, DHT11 Sensor, MQ2 Sensor | Gradient Boosting, KNN, Gaussian Naive Bayes, Random Forest, XGBoosting, Decision Tree |
[100] | Water Showering Mechanism/Low Cost | Raspberry Pi | Tabular, Time Series |
Growth/Other | Confusion Matrices | ||
81. | Crop Production | DHT-22 Temperature and Humidity, Rain Sensor | Multiple Linear Regression |
[101] | Plant Disease Prediction/Disease Attack and Environmental Conditions | Arduino | Time series |
Growth/Periodic Inspection | Multiple R, R Square, Adjusted R Square, Standard Error | ||
82. | Crop Production | Soil Moisture Sensor | CNN |
[254] | Crop Cultivation Using IoT and Computational Intelligence/Traditional Methods in Monitoring Agricultural Fields | NodeMCU, Cloud Database | Image |
Growth, Harvest/Periodic Inspection | |||
83. | Animal Husbandry | MQ-135 Ammonia Gas Sensor, DHT-22 Ambient Temperature and Humidity Sensor, LDR, Sound | Multiple Linear Regression, K-Nearest Neighbor, Naive Bayes, XGBoost, Random Forest |
[255] | Egg Production in the Poultry Farm/Real-Time Environmental Impact | Arduino Uno, Server, SD Card | Tabular, Time Series |
Growth/Poultry Management | Ethernet Shield | Correlation Matrix | |
84. | Crop Production | Raspberry Pi Camera | CNN, AlexNet |
[256] | Remote Crop Disease Detection/Plant Diseases Lead to Reducing the Accessibility of Food | NVIDIA Jetson Nano 4GB, Google Drive | Image |
Growth/Periodic Inspection | Wi-Fi Module, RP-Style Antennas | Accuracy | |
85. | Crop Production | NPK Soil Sensor | Logistic Regression, Support Vector Machine, Gaussian Naive Bayes, K-Nearest Neighbor |
[115] | IoT-Based Context-Aware Fertilizer Recommendation/Costly, Time-Consuming, and Laborious Nature of Real-Time Soil Fertility Recommendation | Cloud Server | Tabular, Time Series |
Growth, Harvest, Post-Harvest/Fertilizer Application | Gateway, Radio Frequency-433 (RF-433) MHz Module | Accuracy, Confusion Matrix | |
86. | Crop Production | DHT11, LDR, Soil Moisture Sensor, Relay Switch | Random Forest, Support Vector Machine, Naive Bayes, Logistic Regression, Decision Tree |
[97] | Smart Agricultural System/Optimizing Farming Operations, Reducing Cost | Arduino, ESP32, Dual-core Tensilica Xtensa LX6 Microprocessor, AWS IoT, AWS Lambda, AWS DynamoDB, Cloud Firestore Firebase Authentication | Tabular |
Growth/Fertilizer Application | Wi-Fi Module | Accuracy | |
87. | Crop Production | Light Detection and Ranging (LiDAR) Sensor, Display screen, Robot Arm, Nine-Axis Gyroscope | YOLO v3-Tiny, SLAM (Simultaneous Localization and Mapping) |
[120] | Autonomous Mobile Robot System/Agricultural Population Loss, Community Decline | NVIDIA Jetson Nano | Image |
Growth, Harvesting | Accuracy | ||
88. | Crop Production | DHT22 Sensor | LSTM, GRU |
[154] | Low-Cost Irrigation System/Low-Cost, Sustainable Irrigation System | Raspberry Pi 3 B+, Arduino | Time Series, Tabular |
Growth/Irrigation | NRF24L01 Module | MSE, RMS, MAE | |
89. | Crop Production | Rainfall Sensor, Wind Speed Sensor, Barometric Pressure Sensor, Humidity Sensor, Temperature Sensor, Arduino L293D Motor Expansion Module | Support Vector Machine |
[84] | Weather Monitoring and Rainfall Prediction/Inaccurate And Complicated Weather Forecast System | Cloud Server, Controller Unit | Time Series |
All stages/Periodic Inspection | Accuracy, Precision, Recall, F1-Score | ||
90. | Crop Production, Hydroponics | ESP32 Camera, DHT11 Sensor, DS18B20 Water Temperature Sensor, pH Sensor, Water Turbidity Sensor | CNN |
[192] | Hydroponic Intelligent Portable System/Improper Management in Agriculture | ESP32 Microcontroller, Raspberry Pi, Cloud Server | Tabular, Image |
Growth/Other | Wi-Fi Module | Algorithm Evaluation | |
91. | Crop Production | Soil Temperature, Soil Humidity Sensor, pH Sensor, EC Sensor | Multi-Layer Perceptron |
[257] | IoT-Based Bacillus Number Prediction/Predict the Amount of Bacillus in an Open Farm Field by Using Very Small Dataset | Tabular | |
Growth/Other | MAPE | ||
92. | Crop Production | LDR Sensor, Temperature and Humidity DHT11 Sensor, Ultrasonic Sensor, Soil Moisture Sensor, LCD, Relay, Motor, Servo Motor | RNN |
[258] | Smart Agriculture Monitoring System/Monitoring and Adjusting Environmental Parameters | Raspberry Pi, Arduino UNO | Tabular |
Growth/Farm monitoring | Wi-Fi Module | ||
93. | Crop Production | Presence development board (CXD5602), Electric microphone (100 Hz–10 kHz), Microphone Preamplifier BOB-12758, Speaker | CNN |
[225] | Smart Raven Deterrent System/High Cost of Drobe-Based Approaches | Multi-core MCU | Audio Signal |
Growth/Periodic Inspection | Confusion Matrices | ||
94. | Crop Production | MQ2 Gas Sensor, DHT11 Temperature and Humidity Sensor, LCD | CNN |
[259] | Onion Detection/Unscientific Storage Facilities Lead to the Wastage of Onions | ESP8266, Google Colab | Image |
Post-Harvest/Periodic Inspection | ESP8266 Wi-Fi Module | Precision, Recall, F1-score | |
95. | Crop Production | VEML6075 UVA /UVB /UV Index Sensor, SCD30 Sensor, SZDoit Smart Robot, Metal Gearmotor 25Dx65L mm HP, HC-SR04 Obstacle Sensor | K-Means |
[260] | Smart Farming Robot for Detecting Environmental Condition/Climate Change, Damaging Effect of Insects on Plants | Raspberry 4.0 | Tabular |
Growth, Harvest/Greenhouse | SparkFun LoRa Gateway, Arduino Nano 33 BLE Sense | WCSS Measure | |
96. | Aquaculture | DHT11, DHT22 Temperature and Humidity Sensor, Soil Moisture Sensor, Water Level Sensors, Focus Camera | Decision Tree Classifier |
[189] | Home Garden Management/Irrelevant Instructions for Growing the Crops | Arduino Uno, ESP8266, Web Server, Firebase | Tabular |
Seed Selection, Growth/Periodic Inspection | ESP8266 Wi-Fi Module | ||
97. | Hydroponics | Temperature and Humidity Sensor, Infrared Sensor, Water Level Sensor, Buzzer, pH Sensor, LCD, Relay, ADC | Random Forest |
[109] | Remote Monitored Smart Hydroponics/Fail to Predict the Soil and Water Conditions Correctly | ESP32 NodeMCU, Cloud Storage | Tabular |
Seed Selection, Growth | Bluetooth Module, Wi-Fi Module | Confusion Matrices | |
98. | Crop Production, Hydroponics | ESP32-CAM (OV2640 Camera), TCS34725 RGB Color Sensor, DS18B20 Temperature Sensor, Water-Turbidity Sensor, DFRobot Gravity Analog pH Sensor, Buzzer, Full-Spectrum LED lights, Submersible Water Pump, 5V Dual Channel Relay Module With Optocoupler, 7-Segment LED display | Logistic Regression |
[93] | AI-Enabled Hydroponics System/Automated Remote Monitoring | ESP32 Microcontroller, ESP32-WROOM DEVKIT, Azure IoT-Hub, Azure DataBricks | Tabular |
Growth | Wi-Fi Module, Bluetooth Module | Accuracy, Recall, Precision, F1-score | |
99. | Animal Husbandry | Precision Livestock Technology | Gradient-Boosting Classifier, Support Vector Machine |
[201] | Early Diagnosis of Bovine Respiratory Disease (BRD)/Early Diagnosis and Prediction of Calves With BRD | Image, Tabular | |
Growth/Periodic Inspection | Accuracy | ||
100. | Crop Production | Temperature Sensor, Humidity Sensor, Soil Moisture Sensor, Light Intensity Sensor, Color Sensor, Pressure Sensor, pH Sensor | Unspecified |
[261] | Crop Management Application/Resource Management, Crop Quality Improvement | Controller Unit, Cloud-Based Server | Tabular, Time Series |
Growth/Periodic Inspection | Wi-Fi Module | Unspecified | |
101. | Crop Production | Soil Moisture Sensor, Water Pump | PLSR (Partial Least Square Regression) |
[163] | AI for Irrigation System/Traditional Irrigation System | NodeMCU (ESP8266), Raspberry Pi 3B+, Web Server | Tabular |
Growth/Irrigation | Algorithm Evaluation | ||
102. | Crop Production | LoRa Node | CNN, Grad-CAM |
[141] | Grape Leaf Disease Identification System/Low Data Rate of Image Transmission | Arduino UNO | Image |
Growth/Other | Dragino LoRa Shield, Dragino LG01-N Gateway | Accuracy | |
103. | Hydroponics | Ambient Temperature and Humidity Sensor, pH Sensor, Oxidation Reduction Potential (ORP) Sensor, CO Sensor, electrochemical Sensor, Ultrasonic Sensor, Water Flow Sensor, Camera | CNN |
[262] | Integrated Smart Farming/Conventional Farming Leads to Lower Quality of Products | Arduino Uno, Raspberry Pi, Cloud Server | Image |
Growth/Other | Accuracy | ||
104. | Aquaculture | Dissolved Oxygen (DO) Sensor, pH Sensor, Conductivity Sensor, Temperature Sensor, Actuator | LSTM |
[263] | Lot for Precision Agriculture/Water Quality | Cloud Server | Time Series, Tabular |
Growth/Precision Aquaculture | LoRa Gateway | ||
105. | Crop Production | Soil Sensor (FC-28), Ambient Temperature and Humidity Sensor (DHT11) | ANN |
[164] | Water Control for Farming Irrigation System/Challenges | Arduino UNO, ESP8266, Blynk Server | Tabular |
Growth/Irrigation | ESP8266_12E Wi-Fi Module | Mean Squared Error | |
106. | Crop Production | Camera | CNN, LSTM |
[162] | Classification of Nutrient Deficiencies in Plants/Rice Nutrient Inadequacies, Difficulty in Creating a Comprehensive Database for Crop Disease | Image | |
Growth/Plant application | Precision, recall, F1-measured | ||
107. | Animal Husbandry | Temperature and Humidity Sensor (DHT11), Body Temperature Sensor (DS18B20), Heart Rate and SpO2 Sensor | Support Vector Machine (SVM), Decision Tree, Multi-Layer Perceptron |
[264] | Livestock Monitoring and Tracking/Poor Maintenance of Cattle Sector | ESP32 microcontroller | Tabular, Time Series |
Growth/Periodic Inspection | ESP8266 Wi-Fi Module | Accuracy | |
108. | Crop Production | Temperature and Humidity Sensor | LSTM |
[168] | Vegetable Supply System/Predict Growth Requirement | ESP32, ESP8266, Raspberry Pi | Time Series |
Growth | |||
109. | Crop Production | Temperature Sensor, NPK Sensor, Humidity Sensor, Wind Speed Sensor, Wind Direction Sensor | GRU |
[119] | Prediction of Paddy Yield/Errors in the Fertilizing and Planting Processes | Node MCU, Arduino, Cloud Server, | Tabular, Time Series |
Growth | F1-Measure | ||
110. | Aquaculture | Ambient Temperature Sensor, Water Temperature Sensor, pH Sensor, Water Level Sensor, Camera, Ammonia Sensor, LCD Display, Relay, 10rpm Motor, Alarm Unit | Canny-ROI-CNN |
[137] | ReMote Aquaculture Monitoring/Lack of Infrastructure and Resources | NODEMCU-ESP32 Controller, PC | Image |
Growth/Periodic Inspection | Wi-Fi Module | Accuracy | |
111. | Crop Production | Spectral Light Sensor (AS-7341), SS-110 Spectroradiometer, LED Light (Q400), Raspberry Pi Camera Module v2, | PlantCV |
[265] | Horticultural Lighting System/ConventiOnal On–Off Time-Scheduling Methods | Raspberry Pi 3 B+, Cloud Storage (Google Drive), ThingSpeak Platform, PC | Image |
Growth, Harvest/Periodic Inspection | Wi-Fi Module | MAE, MAPE, MSE, Root Mean Square Error | |
112. | Crop Production | Ambient Humidity and Temperature Sensor (DHT22), Gas Sensor (MQ135), Light Intensity Sensor (LDR) | VGG-16 |
[266] | AI-Based Storage Monitoring/Poor Maize Storage Monitoring | Arduino Uno, Remote Database, Heroku | Image |
Growth/Periodic Inspection | SIM 800 GSM | Accuracy | |
113. | Crop Production | Temperature and Humidity (DHT-2), | K-Nearest Neighbors (KNNs), Support Vector Machine, Gaussian Naive Bayes, ANN |
[267] | Irrigation Management/Determine The Evapostranspiration From Limited Environmental Conditions | NodeMCU Node (ESP8266(LX106)) | Tabular |
Growth/Irrigation | NodeMCU Wi-Fi-Enabled Module | Confusion Matrices | |
114. | Animal Husbandry | CubeCell AB01, CubeCell AB02S | LSTM |
[185] | LoRaWan Cattle Tracking Prototype/Challenges | Raspberry Pi 4, RAK4631 Module | Tabular |
Growth | LoRa SX1276 Transceiver, LoRa Shield, Nordic nRF52840, LoRaWAN Stack | ||
115. | Animal Husbandry | LM393 Voltage Comparator, Atmospheric Humidity Sensor | Planarization algorithm |
[268] | Pest-Dense Area Localization/Limited Communication, Bad Data Transmission | Mega328pb MCU, Backend Server | Topology Map |
Growth | ZigBee Wireless Communication Module (2.4 GHz) | Unspecified | |
116. | Crop Production | Camera (DS-2DC4423IW-D(C)) | Swim Transformers Network |
[212] | Tea Cultivation/Online Identification Method of Tea Diseases | Cloud Server (OneNET Cloud Platform), Edge Node | Image |
Growth, Harvest/Periodic Inspection | FLASH FISH Mobile Wi-Fi, Border Gateway (Universal TL-WDR5620) | Accuracy, Confusion Matrix, Precision, Recall, Specificity | |
117. | Aquaculture | Underwater Network Camera (VB-H651V), PoE Hub | Support Vector Machine |
[239] | Aquacolony/Underwater Feeding Device | Personal Computer | Image |
Growth | Ethernet hub | Accuracy | |
118. | Aquaculture | pH Sensor, Dissolved Oxygen Sensor, Temperature Sensor | K-Means Clustering, Isolation Forest, Local Outlier Factor (LOF) |
[159] | AnomaLy Detection for Smart aquaculture/Occurrence of Abnormal Conditions in Aquaculture | Computation Components | Time Series |
Growth | Communication Components | Accuracy, Precision, Recall, F1-score | |
119. | General Agriculture | LCD, AD5933 Impedance Converter | KNN |
[186] | Portable Quality Monitoring System/The Gradient of the Water’s Nutrients and pH Level. | Arduino Uno, ThingSpeak Platform | Tabular |
Growth | LoRa Shield | Algorithm Evaluation | |
120. | Crop Production | B-L475E-IOT01A Discovery Kit, Capacitive Digital Sensor for Relative Humidity and Temperature (HTS221), 3D accelerometer, 3D Gyroscope (LSM6DSL), Dynamic NFC Tag (M24SR), Real-Time Clock Calendar Antenna | ANN |
[203] | AI-Powered IoT Devices In Wine Production/Ochratoxin A (Food-Contaminating Mycotoxins) | M4 Core-Based STM32L4 | Tabular, Time Series |
Harvest, Post-harvest | Accuracy, Confusion Matrix | ||
121. | Crop Production | Satellite (Landsat 7 and 8, Sentinel-2), Camera-Equipped Drone | Unspecified |
[104] | Agricultural Applications/Challenges | Processor | Tabular, Time Series, Spectral Images |
Agricultural Stages/Practices | Unspecified | ||
122. | Crop Production | LoRa Antenna, Unmanned Aerial Vehicle (UAV) | LSTM |
[169] | Soil Volumetric Water Content measurement/Inconsistency Data Resources | Host Computer | Time Series |
Growth/Other | LoRa Antenna | R, Root Mean Square Error, MAE | |
123. | Crop Production | Sprayer with Servo Motor, Raspberry Pi Camera Module Rev1.3, IR Sensors, DC Motors, IR Sensors, DC Motors | YOLO v3, Inceptionv3, SVM |
[269] | Automatic Disease Detection and Pesticide Atomizer/Manual Monitoring Crops | Raspberry Pi 4 | Image |
Growth/Periodic Inspection | Wi-Fi Module | Accuracy | |
124. | Crop Production | Network Camera (Logitech C525), Apple iPhone 11 Camera, Thermal Imaging Sensor (PureThermal 2 With Lepton 3.5), LiDAR (RPLiDAR A1), Robotic Arm System (Open MANIPULATOR-X), Temperature and Humidity Sensor (YUDEN-TECH eYc THS13), Carbon Dioxide Sensor (YUDEN-TECH eYc GS43), JGB37-520 DC Gear Motors, Nine-Axis Sensor (MPU9250), RPLiDAR A1 Lidar | CNN, YOLOv4 |
[151] | Autonomous Mobile intelligent/Manual Inspection | ASUS Mini PC PB60G, ESP32 DOIT DEVKIT, Raspberry Pi 4B, | Image |
Growth/Periodic Inspection | 802.11 b/g/n/e/i 2.4 GHz Wi-Fi | Accuracy | |
125. | Crop Production | Color Sensor (TCS34725), RGB LED Light, | Gaussian Process Regression |
[142] | Soil Nutrient Analyzer/Lack of Cost-Effective Soil Nutrients | ESP32-Wroom-32 | Tabular |
Growth/Fertilizer | ESP32 Bluetooth Radio | MSE | |
126. | Animal Husbandry | Water Quality Sensor, Temperature Sensor, Dissolved Oxygen Sensor, pH Sensor | Genetic Algorithm Backpropagation |
[211] | Aquaculture Grid System/Quality Of Aquaculture Product | ESP32 | Time series |
Growth | LoRa Module, 4G Module | MSE, Root Mean Square Error, MAE | |
127. | Aquaponics | Temperature Sensor, pH Sensor, Turbidity Sensor, Electrical Conductivity (EC) Sensor, Light Intensity Sensor, Temperature Sensor, Carbon Dioxide Level Sensor | Random Forest |
[133] | Smart Aquaponics System/Traditional Agriculture | Atmega328p (Arduino Uno and Arduino Nano) Microcontroller Board, NodeMCU, Raspberry Pi 4, ESP8266 microcontroller | Time Series |
Growth | Wi-Fi Module | Absolute Mean Error | |
128. | Crop Production | Mobile Camera, L298N Motor Driver, HC-SR04 Ultrasonic Sensor, 720-Pixel Web Camera, DHT22 Sensor, Piezoelectric Transducer Humidifier, Soil Moisture Sensor, Water Pump, Ultrasonic Mist Maker, Camera, Cooling Fan | YOLO v5 |
[270] | PlanT Growth in a Greenhouse/Inefficiency in Agriculture Sector | NodeMCU, GoogleSheets | Image |
Growth | Wi-Fi Module | ||
129. | Crop Production | Temperature and Humidity Sensor (DHT11) | Analytical Prediction Algorithm using Estimations |
[184] | Fog -Enabled LoRa/High Power Consumption | Raspberry Pi 4 (Model B, 8GB RAM), Chirpstack Opensource Long-Range Wide-Area Network (LoRaWAN) Server | Time Series |
Growth | Dragino PG-1302 (10-Channel LoRa-Integrated Circuit), Dragino Arduino LoRa Shield-Based on Semtech SX1276/SX1278 Chip | MAE | |
130. | Crop Production | Xiaomi Mi Flora Sensor, DHT11 Moisture Sensor, YF-S201 Flow Meter, Ultrasonic Level Sensor (HC SR04), Electrovalve | XGBoost, Classification and Regression Tree (CART), KNN, Logistic Regression, Linear Discriminant Analysis, Gaussian Naive Bayes |
[122] | IrrigatiOn Management System/Increase iN the Consumption of Drinking Water | DA14580 Processor, ESP32-WROOM | Tabular |
Growth/Irrigation | Bluetooth Low Energy (BLE) Module | Accuracy | |
131. | Aquaponics, Aquaculture | Monitoring/Control Components | MASK-R-CNN |
[271] | Growth Estimation Aquaponics/ConveNtional Cultivation Methods | Fog Node, Edge Node | Image |
Growth, Harvest | Gateway | Root Mean Square Error, RMSPE | |
132. | Crop Production, Aquaculture | Disolved Oxygen Sensor (DFRobot Gravity Model No: DFR1628), pH Sensor (DFRobot Gravity, Model SEN0161), Total Dissolved Solids Sensor, Temperature Sensor (DS18B20), Optical Water Level Sensor, Water Electrical Conductivity Sensor, Oxygen Pumps, Water Pumps, Biofilters, Water Filter, Solenoid Valves, Aerator, Air Diffusor | Random Forest, Support Vector Regression, Gradient-Boosting Machine, Linear Regression (LR) |
[272] | Freshwater Aquaculture Management/Maintaining the Aquaculture Environment | Edge Node, Fog Node | Time Series |
Growth | Correlation(R), MAE | ||
133. | Crop Production, Animal Husbandry | DJI Mavic Mini Light-weight Drone, Drone-Mounted Camera, Mobile Camera, Real-Time Clock | YOLO v5 |
[230] | Estimating Quality of Tea Leaves/Cost-Effective, Manual Labor | Image | |
Harvest/Periodic Inspection | ESP8266 Wi-Fi Module | Accuracy, Loss | |
134. | Crop Production | Temperature Sensor, Humidity Sensor, CO Sensor | LSTM |
[171] | Open Connectivity Foundation for Energy consumption/Uneasily Control Greenhouse Environment | Raspberry Pi | Time Series |
Growth/Greenhouse | Wi-Fi Module | Root Mean Square Error, MAE, R | |
135. | Crop Production | Soil Temperature Sensor, Soil Moisture Sensor, Ambient Humidity Sensor (HIH 5030), Ambient Temperature Sensor (MCP 9701A), Leaf Wetness Sensor (Phytos 31:LWS-L12) | LSTM |
[123] | Plant Disease Prediction/Crop Loss Due to Plant Diseases | Thingspeak Platform | Tabular |
Growth/Periodic inspection | Wi-Fi Module | Accuracy, Precision, Recall, F1-Score | |
136. | Hydroponics | Water Depth Sensor (EC-3190), Light Intensity Sensor (Light-Dependent Resistor—LDR), Temperature and Humidity Sensor (DHT11), Water Temperature Sensor (MAX6675), pH Sensor (EC201), | Random Forest |
[110] | Sensor Fusion-Based Smart Hydroponic/Automation and Monitoring of Environmental Conditions | ESP8266 | Tabular |
Growth | Wi-Fi Module | ||
137. | Crop Production | Soil Moisture Sensor (SEN0114), pH Sensor (PHE-45P), Temperature and Humidity Sensor (DHT11), Water Pump | Googlenet, Alexnet, VGG-19 |
[273] | Plant Disease Identification/High Cost of Manual Controlling | ESP8266, Atmega16 Microcontroller, Raspberry Pi 3 | Image |
Growth, Harvest/Periodic Inspection | ESP8266 Wi-Fi Module, GSM800L Module | Accuracy | |
138. | Crop Production | Ambient Temperature Sensor, Solar Radiation Sensor, Precipitation Sensor, Humidity Sensor, Wind Speed and Direction Sensor | Unspecified |
[170] | IoT Climate Data/Crop Yield and Cost | Remote Data Server | Tabular, Time Series |
Growth/Pest Prediction | Unspecified | ||
139. | Crop Production | Ambient Temperature and Humidity (DHT-11), Soil Moisture Sensor (FC-28), Gas Sensor (MQ-135), Light Intensity Sensor (LM-393), 5V-10A Relay Module | Logistic Regression, SVM |
[183] | Smart Farming/Loss Of Crop Due to Climatic Condition | Raspberry Pi 3, Cloud Server | Tabular |
Growth/Monitoring | Wi-Fi Module | ||
140. | Crop Production | Relative Humidity and Temperature Sensor, (DHT11), Soil Moisture Sensor | Gaussian Naive Bayes, Linear Support Vector Classifier, Decision Tree, Random Forest, Gradient-Boosting Classifier, Logistic Regression, Stochastic Gradient Descent |
[136] | Monitoring systems/Failure of Crop Production and Lack of Nutrients | Arduino Uno, ESP8266, Thingspeak platform | Tabular |
Growth/Monitoring | Wi-Fi Module | Accuracy | |
141. | Crop Production | Soil Moisture, Ambient Temperature and Humidity Sensor (DHT11), Passive Infrared (PIR) Sensor, Camera, pH Sensors, Relay | CNN |
[215] | Real-time Application of IoT in Agriculture/Manual Agriculture | Raspberry Pi, Blynk Cloud | Tabular, Image |
Growth/Monitoring | Wi-Fi Module | ||
142. | Animal Husbandry, Crop Production | Temperature and Humidity Sensor (DHT11), Moisture Sensor (YL-38), NOIR-V2 Camera Module, Passive Infrared (PIR) Sensor | CNN, SVM, Naive Bayes, KNN |
[165] | Smart Farmland Monitoring and Animal Intrusion Detection/Manula Irrigation and Animal Intrusion | Raspberry Pi, Google Cloud Platform | Image |
Growth, Harvest/Periodic Inspection | ZigBee Module | Accuracy | |
143. | Animal Husbandry | Camera, Infrared Sensor, LEDs | Naive Bayes Classifier |
[182] | Intelligent Insect Monitoring System/Toxic Products | Raspberry Pi Zero, Cloud Server | Image, Tabular |
Growth, Harvest/Monitoring | GSM Module, Wi-Fi Module | ||
144. | Crop Production | Temperature Sensors (LM 35 TO-92-3), Soil Moisture Sensors (LM358), Humidity Sensors (DHT11), Light Intensity Sensors (BH1750), Hyperspectral Cameras (HySpex), Water Flow Sensors (YF-S201) | CNN, Ensemble SVM |
[147] | Crop Disease Monitoring System/Data Sharing and Automatic Farming | Auduino Uno | Image, Tabular |
Pre-Harvest/Disease Detection | GSM Module, Wi-Fi Module | Precision, Recall, Accuracy, Specificity | |
145. | Crop Production | Air Temperature Sensor, Air Humidity Sensor, CO Concentration Sensor, Illumination Intensity Sensor, Soil Moisture Sensor, Soil Temperature Sensor, Leaf Wetness Sensor, Soil Humidity Sensor | Logistic Regression |
[181] | Predicting Agricultural Pests and Diseases/ | Raspberry Pi 3 Model B, Arduino Uno R3, AWS IoT, Amazon Simple Storage Service (S3), Elastic MapReduce (EMR) | Tabular, Time Series |
Growth/Monitoring | ZigBee Module | AUC | |
146. | Crop Production | Soil Moisture Sensor, Temperature and Humidity Sensor | Fuzzy Logic System |
[274] | Plant Monitoring/Quality and Productivity of Plant Development | NodeMCU, Blynk Platform | Time Series |
Agricultural Stages/Practices | Wi-Fi Module | ||
147. | Animal Husbandry | GPS Tracker Collars Equipped With Pitch and Roll Tilt Sensors | Random Forest, Decision Trees (DTs) using C50, XGBoost, K-Nearest Neighbors (KNNs), Support Vector Machine (SVM), Naive Bayes |
[275] | Animal Monitoring-Based IoT/Additional Support of Animal Husbandry Activities | Web Servers | Time Series |
Growth/Animal Monitoring | MiniPC (Gateway) | Confusion Matrix | |
148. | Crop Production | Ambient Temperature and Humidity Sensor (DHT11), Comparator Chip (LM393), Soil Moisture Sensor (EC-1258), RPi Camera | CNN |
[193] | Edge Computing Framework/Poor Crop Health, Soil Infertility, Limited Resources | Arduino Uno (ATmega328P), RPi 3B+, ESP32 MCU Node | Image, Time Series |
Sowing, Growth/Monitoring | ESP32 Wi-Fi Module | Accuracy | |
149. | Crop Production | Sensor Node | Density-Based Spatial Clustering of Applications with Noise (DBSCAN) |
[180] | Contract Farming/Poor Economic Condition | Raspberry Pi, Cloud Server | Tabular, Time Series |
All Stages/Crop monitoring | Wi-Fi Module | ||
150. | Crop Production | Soil Temperature and Moisture Sensor (SM3002B), Ambient Temperature and Humidity Sensor (AM3006) | LSTM |
[217] | Prediction of Soil Moisture and Temperature/Environmental Data Acquisition | STM32F103ZET6 Microcontroller, Alibaba Cloud | Tabular, Time Series |
Growth/Periodic Inspection | Transceiver Module (RSM3485), WH-NB75-B5 NB-IoT wireless Module | Root Mean Square Error, MAPE, R | |
151. | Crop Production | Gas Sensor (MQ135), Moisture Sensor (DHT11), Temperature Sensor, pH Sensor | CNN, SVM |
[202] | Prediction of Amount of Pesticides and Diseases/Harmful Pesticides | Arduino UNO, Cloud Server (MATLAB ThinkSpeak) | Image |
Post-Harvest/Plant Monitoring | Wi-Fi Module (ESP8266) | Accuracy, Precision, Recall | |
152. | Crop Production | Soil Moisture Sensor (LM393), Smoke Sensor (MQ2), Gas Sensor (MQ9), Actuators (Water sprinklers) | CNN |
[276] | Agricultural Field Monitoring/Human Effort | Arsuino Uno, ESP8266, Cloud Server | Image |
Growth, Harvest | Wi-Fi Module | Accuracy, Precision, Recall, F1-Score | |
153. | Crop Production | Fungus Detector, Ambient Temperature and Relative Humidity Sensor, Soil Moisture Sensor, Wind Speed Sensor, Wind Direction Sensor, Sunlight Intensity Sensor | SVMR (Support Vector Machine with Radial Basis Function) |
[277] | Agricultural Environmental Data Collection System/Real-Time Detection of Environment | ZigBee Module, Wi-Fi Module, GPS Module | Tabular |
Growth/Periodic Inspection | Microcontroller, Cloud Server | Mean Absolute Error | |
154. | Crop Production | Light Intensity Sensor, Air Sensor, Soil Sensor (RS-485 interface) | Linear SVR, SVC, ADABoost DT, Random Forest, XGBoost |
[87] | Agricultural Irrigation Prediction/Manually Controlled System | API Server, Raspberry Pi3 | Tabular, Time Series |
Growth/Irrigation | LoRa Module | Mean Absolute Error, Mean Bias Error, Root Mean Square Error | |
155. | Crop Production | Camera | VGG-16, LeNet |
[205] | Pest Detection/Prompt Detection of Dangerous Parasite | Raspberry Pi, Intel Movidius Neural Compute Stick (NCS) | Image |
All Stages/Periodic Inspection | LoRa radio | Accuracy, Recall, Precision, F-score | |
156. | Hydroponics | Temperature Sensor, Water Level Sensor, Light Intensity Sensor, Humidity Sensor, Relay, Fan, Lamp, Solenoid Valve | Deep Neural Network |
[91] | Predictive Control on Lettuce NFT/Unoptimized Manual Control | Raspberry Pi, Arduino | Tabular, Time Series |
Growth/Optimization | MQTT Module | Accuracy | |
157. | Crop Production | Soil Moisture Sensors, Digital Humidity and Temperature (DHT11) Sensor, and pH Sensor | SVM, CNN, RNN |
[278] | Smart Intelligent Advisory Agent/Traditional Cultivation Methods | Server | Image, Time Series |
Agricultural Stages/Practices | Wi-Fi Module | MSE, R | |
158. | Crop Production | 20 Megapixels Digital Camera | YOLO, Tiny-YOLO |
[279] | Intelligent Animal Repelling System/Loss Production, Ungulate Attack | RPi 3B+, NVIDIA Jetson Nano, Cloud Server | Image |
Growth/Others | Wi-Fi Module, LoRa Module RN2483A, Xbee Radio Module | Mean Average Precision, Average Precision, Recall | |
159. | Crop Production | Soil Moisture Sensor | LSTM |
[145] | Digital Farming/Crop Cultivation Measurement | Web Server | Image |
Crop Cultivation/Others | Wi-Fi Module | Accuracy | |
160. | Fish Farming, Aquaponics | Temperature Sensor (DHT11), Light Intensity Sensor (BH1750), Soil Moisture Sensor (LM393), Ultrasonic Sensor HC-SR04, Relay Driver Circuit Module, pH Sensor SEN0161 | Mask RCNN |
[112] | Smart Aquaponics Monitoring/Traditional Agricultural Practices | Raspberry Pi, Cloud Server | Image, Time Series |
Monitoring/Precision Farming | Wi-Fi Module | Precision, Recall, F1-Score | |
161. | Animal Husbandry | Actuators (Vibration, Shock, Water Drop, Heat, Air Blast), Motor, Camera, Microphone, Temperature Sensor | Mel Frequency Cepstral Coefficient, Convolutional Neural Network, Min–Max Scaling |
[208] | Piglet Crushing Mitigation/Piglet Mortality | PigTalk Server, GPU (Nvidia GeForce RTX 2080), CPU (Intel Core i7-7800X) | Audio Data |
All stages | Accuracy | ||
162. | Crop Production | Soil Temperature and Moisture Sensor, Humidity Sensor, Motor | Gradient-Boosting Regression Trees |
[166] | Smart Plan Irrigation System/Challenges | ESP8266, Personal Computer | Tabular |
Growth/Irrigation | Wi-Fi Module, SPI | Accuracy | |
163. | General Agriculture | Sensor Node | CNN |
[95] | Smart Farming IoT/Not Working Properly in Remote Areas | Arduino Uno, Raspberry Pi, Cloud Server | Image, Tabular |
Growth | nRF24L01 | ||
164. | Animal Husbandry | Motion Sensors, Gyroscope (GY-25), Accelerometer, Heart Rate Sensor (MAX30100), Body Temperature Sensor (MLX90615) | Support Vector Machine, Decision Tree |
[90] | Dairy Farming, Cattle Farming/Efficient Cattle Health Monitoring | Microcontroller, Raspberry Pi, Cloud Server | Tabular |
Growth/Poultry Growth Monitoring | Wi-Fi Module (WEMOS D1), MQTT Module, Wi-Fi Router | Accuracy | |
165. | Animal Husbandry, Livestock Industry | Environment Air Quality Sensors, Water Flow Sensor, Camera, Microphone | Faster R-CNN |
[129] | Analyzing Pigs’ Behavior/Declining and Aging Livestock Population | Image | |
Growth/Recognition and Observation | |||
166. | Aquaponics, Hydroponics | Water Temperature Sensor, Aquarium Water Heater, Aquarium Fan Cooler, Relay Module | Decision Tree Regressor, AdaBoost |
[111] | Water Temperature Forecasting/Extreme Water Temperature | Server, ESP8266 Microcontroller | Tabular |
Growth/Control and Monitoring System | MQTT Broker | MSE, R Squared | |
167. | Crop Production | Soil Moisture Sensor | Naive Bayes, Support Vector Machine |
[210] | Soil Moisture Calibration/Expensive Soil Moisture Sensor | Time Series | |
Growth, Harvest | Confusion Matrix | ||
168. | Hydroponics | Actuator, Water Pump, pH, TDS Sensor, Temperature probe | KNN |
[134] | Hydroponics Nutrient Control System/Manual Hydroponic Farming | Arduino Leonardo, ESP8266, Server | Tabular |
Growth | Wi-Fi Module | Accuracy | |
169. | Crop Production | Camera, Buzzer | K-Means, FAST Algorithm |
[280] | IoT-Based Object Detection/Agricultural Damage From the Monkey in the Farm Field | Node, Server | Image, Tabular |
Growth | Gateway Router | Recognition Rate | |
170. | Crop Production | Camera, DHT11 Sensor, Smoke Sensor, Soil Moisture Sensor, LDR | ANN |
[155] | Wireless Sensor Network-Based Autonomous Farming Robot/Dynamic Changes in the Environment | Raspberry Pi, MCU (AVR), ESP8266 | Image |
Growth | nRF, Wi-Fi | Confusion Matrix | |
171. | Crop Production | Raspberry Pi Camera, DHT11 Humidity and Ambient Temperature Sensor, Soil Moisture Sensor | DNN, Fast R-CNN |
[105] | Smart Greenhouse Disease Prediction/Plant Disease Detection | Raspberry Pi, Personal Computer | Image, Tabular |
Growth | GSM Module | Accuracy | |
172. | Crop Production | MQ2 Gas Sensor, DHT22 Temperature/Humidity Sensor | Multiple Linear Regression |
[204] | Kiwi Fruit Shelf Life Estimation/Quality Standard Maintenance | WIO Terminal (ATSAMD51-Based Microcontroller) | Time Series |
Post-Harvest/Food Quality Application | WIO Terminal | ||
173. | Aquaculture, Fish Farming | pH Sensor (TOL-00163), Ultrasonic Sensors (HC-SR04), IR Optical Sensor (TCRT5000) | Linear Regression Model |
[156] | Fish farm-Based IoT/Cost-Effective Fish Farm Monitoring | Arduino UNO, Web Server | Tabular, Time Series |
Growth | WEMOS D1 (Wi-Fi Module) | Accuracy, ME, MSE, Root Mean Square Error | |
174. | Crop Production | Raspberry Pi Camera Module v1 | Random Forest, Support Vector Machine |
[83] | Visual Sensor Nodes/Wireless Sensor Network | Raspberry Pi 3 model B, RabbitMQ Server | Image |
Pre-Harvest/Monitoring | Bluetooth Low Energy (BLE 4.0) | Accuracy, Recall, Precision, Specificity, F1-Score | |
175. | Crop Production | Sunlight Intensity Sensor, Soil Moisture Sensor, Soil pH Sensor, Humidity and Temperature Sensor | Naive Bayes, SVM |
[187] | E-Agrigo/Conventional Farming | Arduino | Tabular, Image |
Growth, Harvest | Arduino Wi-Fi Module | Accuracy | |
176. | Crop Production | DS18B20 Digital Temperature Sensor | Spatial Attention LSTM |
[214] | Temperature Forecasting/Temperature Monitoring | Control Host, Cloud Server | Time Series |
Growth | Root Mean Square Error | ||
177. | Crop Production | Soil Moisture Sensor, Temperature-Humidity Sensor (DHT22), Solenoid Valve | ANN (Backpropagation) |
[77] | Plant Monitoring Control System/Leaf Disease | ESP8266, Personal Computer | Image |
Growth/Tomato Crop Plantation Monitoring | Wi-Fi Router, Zigbee Module | Confusion Matrix | |
178. | Crop Production | Ultrasonic Distance Sensor (HC-SR04), Humidity Sensor (BME280), Camera Module, Motor Driver (L298N), ThingsBoard, Water Pump | KNN |
[144] | Robot Monitoring for Soybean Field Soil Condition/Soil Moisture | Raspberry Pi 3B+ | Image |
Growth/Soybean Growth | MQTT Broker (Hive MQ) | Accuracy, Recall, Precision, F1-Score | |
179. | Crop Production | Humidity Sensor, Light Sensor, Temperature Sensor, Camera, Relay, DC Motors | CNN |
[281] | Fruit Quality Detection/Identification and Quality Evaluation | Microcontroller, Computer | Image |
Post-Harvest/Food Quality Detection and Management | Wi-Fi Module | ||
180. | Crop Production | Atmospheric Temperature and Humidity Sensor (DHT11), Water Pump, Soil Moisture Sensor (YL-38, YL-69), Relay | ANN (Multi-Layer Perceptron), K-Means |
[282] | Ornamental Plant Care/Soil Humidity Monitoring | ESP8266 | Tabular |
Growth | ESP8266 Wi-Fi Module | ||
181. | Crop Production | Soil Moisture Sensors, Air Humidity and Temperature Sensor (DHT22), VEML6070 UV Sensor | RNN-LSTM |
[160] | Precision Irrigation/Food Security and Climate Change | Raspberry Pi 4B, Arduino MEGA 2560 R3 | Tabular |
Pre-Harvest/Irrigation | Xbee Zigbee Wireless Adapter | Root Mean Square Error, MSE, MAE, R, Correlation Coefficient, Relative Absolute Error, Root Relative Absolute Error | |
182. | Crop Production | Soil Temperature and Moisture Sensor (DHT11), Flow Sensor | SVM, KNN |
[121] | Automatic Irrigation of Water and Plant Disease Detection/Lack Higher Crop Productivity | Image | |
Sowing/Water management | Accuracy, F1-Score, Precision, Prediction time, Training time | ||
183. | Crop Production | Leaf Temperature and Turgor Pressure Sensors | SVM, Decision Tree, Naive Bayes, Logistic Regression, KNN |
[85] | Precision Irrigation/Sensor Fault Detection in Japanese Plum Leaf-Turgor | Tabular, Time Series | |
Growth | MQTT Broker and Client | Accuracy, Precision, Recall, F1-score, AUC, MCC, Kappa | |
184. | Crop Production | Temperature Sensor | CNN-LSTM |
[188] | Precision Agriculture/Large Datasets of IoT Infrastructures | High-Performance Computing Server, IoT Device | Tabular, Time Series |
Growth, Harvest | MQTT Broker and Client | R, Root Mean Square Error, MAE | |
185. | Crop Production | IoT Nodes | Remora Chicken Swarm Optimization With SqueezeNet (RCSO-Based SqueezeNet) |
[226] | Root Disease Classification/Inability to Accurately Classify | Cluster Heads | Image |
Crop Productivity/Root Disease Monitoring | Sensitivity, Specificity, Accuracy, Computational Time | ||
186. | Crop Production | Temperature and Humidity Sensor (DHT22), Soil Moisture Sensor (YL-38, YL-69), Light Intensity Sensor (GY-30), and Atmospheric Pressure Sensor (BMP180) | LSTM |
[143] | Pest Incidence Forecasting/Pest Control | Raspberry Pi 4, Arduino Nano, DS3231 Module | Tabular, Time Series |
Growth/Pest Control and Monitoring | Grove-LoRa Radio, SX1276 Transceiver | R, MSE | |
187. | Hydroponics | pH Sensor, Humidity and Temperature Sensor (DHT11), Light Intensity Sensor (Photo Resistor or LDR), The Water Level Sensor, DC Water Pump, DC Motor, LED Bulb | Deep Neural Network |
[283] | IoT-Based Hydroponics/Manual Monitoring, Soil-Less Cultivation, Urban Farming | Arduino, Raspberry Pi3, Cloud Server | Tabular, Time Series |
Growth | UART Serial Communication | ||
188. | Mushroom Farming | Camera Module, AC Bulb | Naive Bayes, Decision Tree, Logistic Regression, KNN, SVM, Random Forest |
[138] | Mushroom Farm Automation/Traditional Mushroom Cultivation | ESP32, Raspberry Pi | Image |
Growth, Harvest/Toxic Mushroom Classification | Confusion Matrix | ||
189. | Crop Production | Soil Moisture Sensor, Wetness Sensor, Waterproof Temperature Sensor | Kalman Filter, Weighted Outlier Robust Kalman Filter, SVM |
[233] | Data Fusion in Smart Agriculture/Small Battery Life, Limited Storage, Low Accuracy | Arduino Pro Mini, Raspberry Pi Zero | Time Series |
Growth, Harvest/Soil Moisture, Evapostranspiration | Wi-fi Adapter, nRF24l01 | Root Mean Square Error, R, MAE, MSE, Prediction Speed, Training Time | |
190. | Animal Husbandry | Long Range Pedometer | Random Forest, KNN |
[218] | Early Lameness Detection/High-Cost, Complex Equipment, Human Observation | Local PC | Time Series |
Infancy/Real-Time Identification | MQTT Module | Accuracy | |
191. | Crop Production, Animal Husbandry | Raspberry Pi Camera v2.1 Module, SHT20 Temperature–Humidity Sensor, BH1750 Light Intensity Sensor | TinyYolo, Light-Weight CNN, CNN |
[229] | Continuous Monitoring of Insect Pest/Mango Cultivation Damaged by Insect and Environmental Condition | Raspberry Pi Zero W, Cloud Server | Image |
Pest Monitoring | Raspberry Pi Zero W Wi-Fi Module | Detection Rate, Precision, Recall, F1-Score | |
192. | Aquaculture | NITRATE (PPM) AquaTest, pH Sensor (HI 98107), AMMONIA (mg/l) GS06 Sensor, Temperature Sensor (LM35), Dissolved Oxygen Sensor (DO-520), TURBIDITY Sensor (2100P), MANGANESE (mg/l) 2 S Water | Dilated Spatial Temporal CNN |
[107] | Water Quality Assessment/Real-Time Monitoring | Arduino Uno, ESP8266 | Time Series |
Growth/Other | Accuracy, Precision, Recall, Root Mean Square Error, MAPE, MAE, AUC, ROC, Loss | ||
193. | Crop Production | Raspberry Pi Camera, DHT-22 Temperature, Humidity Sensor, Soil Sensor (Temperature, Humidity, and Electrical Conductivity) | YOLO v5, YOLOR, Faster R-CNN, RetinaNet |
[161] | Asparagus Cultivation/Asparagus Growth and Monitoring Pest and Disease | Raspberry Pi 3B | Image, Tabular |
Growth, Harvest | Precision, Recall, Confusion Matrix | ||
194. | Crop Production, Animal Husbandry | Soil Moisture Sensor, Atmospheric Temperature Sensor, Soil Temperature Sensor, Rainfall Sensor | Fuzzy Logic |
[125] | Crop Pest Infestation/Identify Crop Diseases | Raspberry Pi 4, CC2650 MCU, Cloud Server | Tabular, Time Series |
Growth | 5G-LTE Module | Confusion Matrix, F-measure, MCC, ROC, Accuracy, Train time, Run time | |
195. | Crop Production | Raspberry Pi 8 megapixel RGB Camera | YOLO |
[157] | Flow Meter Monitoring/Time-Consuming and Costly | Raspberry Pi 4, Cloud Server | Image |
Agricultural Stages/Irrigation | Raspberry Pi LoRa Node pHAT, External 915 MHz LoRa Antenna | Accuracy | |
196. | Crop Production | Temperature Sensor, Smoke Sensor (MQ-2), Flame Sensor, IP Camera | Convolutional Neural Network, Mobile Net v2, Fuzzy Logic |
[213] | Active Fire Locations/Challenges | Raspberry Pi | Image |
Post-Harvest/Reducing Active Farm Fire | XBee Modules | Precision, Recall, F1-Score, Accuracy, R Score | |
197. | Crop Production | Temperature and Relative Humidity Sensor (TH10), Wind Speed Sensor (Macsensor, W70S), Soil Moisture Sensor (RS485/Analog), RGB Camera (LM-817, Sony IMX179, 1080P, USB 3.0) | CNN, LSTM |
[223] | Water Status in Wheat Crop/Accurate Assessment of Plant Water | Raspberry Pi 3b+, Web Server | Tabular, Image |
Sowing, Growth/Irrigation | Wi-Fi Router | Accuracy, Precision, Recall, Intersection Over Union, F-measure | |
198. | Animal Husbandry | Motion Processing Unit (MPU6050), GPS Module (Neo 6M), Temperature Sensor Thermistor | XGBoost, Random Forest |
[237] | Cattle Activity Monitoring/Information Related to Standing Behavior of Cattle | Microcontroller (ATMEL328) | Tabular |
Growth/Practices | GSM Module (SIM800) | Accuracy, Precision, Sensitivity, Specificity | |
199. | Crop Production | Soil Moisture Sensor (YL 69), Pressure Sensor (BMP 280), Humidity and Temperature Sensor (DHT11), Wireless Network Node MCU (ESP 8266) | Radial Function Network |
[167] | Resource Optimization | Cloud Server | Time Series |
Sowing, Growth/Control Soil Quality | Accuracy, Sensitivity | ||
200. | Apiculture | Gas Sensors (CO2 TGS4161; O2 SK-25; NO2 MiCS-2710; and Air Contaminants TGS2600 and TGS2602), Temperature MCP9700A Sensor, Humidity 808H5V5 Sensor, Acceleration LIS331DLH Sensor | Decision Tree |
[139] | Honey Bee Health Monitoring/Protecting the Honey Bees | ATmega1281 microcontroller | Tabular |
All Stages | ZigBee Radio Module | Confusion Matrix, Accuracy | |
201. | Crop Production | Tensiometer Sensor, Soil Moisture Sensor, Temperature Sensor, Humidity Sensor | ANN |
[238] | Irrigation System/Food security, Autonomous Irrigation of Crops | Microcontroller Board | Tabular, Time Series |
Site Selection | 6G-Communication Module | Accuracy, Sensitivity, Precision | |
202. | Crop Production | Laser Rangefinder, Inertial Measurement Unit (IMU), Optical Flow Module | Particle Swarm Optimization, K-Means |
[209] | Site Selection/Optimization | STM32H743IIT6 Microprocessor | Tabular |
Site Selection | ZigBee Module | R-Square | |
203. | Crop Production | YOLO v5, Kernel Extreme Learning Machine | |
[220] | Weed Detection/Plant Recognition, Detection | Cloud Server | Image |
Seed Selection, Sowing, Growth/Plant Inspection | Precision, Specificity, Recall, MCC, Accuracy, Geometric Mean |
References
- Gómez-Chabla, R.; Real-Avilés, K.; Morán, C.; Grijalva, P.; Recalde, T. IoT Applications in Agriculture: A Systematic Literature Review. In ICT for Agriculture and Environment; Valencia-García, R., Alcaraz-Mármol, G., Cioppo-Morstadt, J.d., Vera-Lucio, N., Bucaram-Leverone, M., Eds.; Springer: Cham, Switzerland, 2019; pp. 68–76. [Google Scholar] [CrossRef]
- Pandey, N.; Kamboj, N.; Sharma, A.K.; Kumar, A. An Overview of Recent Advancements in the Irrigation, Fertilization, and Technological Revolutions of Agriculture. In Environmental Pollution and Natural Resource Management; Bahukhandi, K.D., Kamboj, N., Kamboj, V., Eds.; Springer: Cham, Switzerland, 2022; pp. 167–184. [Google Scholar] [CrossRef]
- Carthy, U.M.; Uysal, I.; Badia-Melis, R.; Mercier, S.; O’Donnell, C.; Ktenioudaki, A. Global food security—Issues, challenges and technological solutions. Trends Food Sci. Technol. 2018, 77, 11–20. [Google Scholar] [CrossRef]
- Mowla, M.N.; Mowla, N.; Shah, A.F.M.S.; Rabie, K.M.; Shongwe, T. Internet of Things and Wireless Sensor Networks for Smart Agriculture Applications: A Survey. IEEE Access 2023, 11, 145813–145852. [Google Scholar] [CrossRef]
- Kaushik, K. Smart Agriculture Applications Using Cloud and IoT. In Convergence of Cloud with AI for Big Data Analytics: Foundations and Innovation; John Wiley & Sons, Ltd: New York, NY, USA, 2024; pp. 89–105. [Google Scholar] [CrossRef]
- Prasad, G.D.S.; Vanathi, A.; Devi, B.S.K. A Review on IoT Applications in Smart Agriculture. Adv. Transdiscipl. Eng. 2023, 32, 683–688. [Google Scholar] [CrossRef]
- Pathmudi, V.R.; Khatri, N.; Kumar, S.; Abdul-Qawy, A.S.H.; Vyas, A.K. A systematic review of IoT technologies and their constituents for smart and sustainable agriculture applications. Sci. Afr. 2023, 19, e01577. [Google Scholar] [CrossRef]
- Sandilya, D.; Bharali, C.; Ringku, A.; Sharma, B. Utilizing Greenhouse Technology Towards Sustainable Agriculture Using IoT “TechFarm”. In Emerging Technology for Sustainable Development; Deka, J.K., Robi, P.S., Sharma, B., Eds.; Springer: Singapore, 2024; pp. 373–382. [Google Scholar] [CrossRef]
- Senoo, E.E.K.; Akansah, E.; Mendonça, I.; Aritsugi, M. Monitoring and Control Framework for IoT, Implemented for Smart Agriculture. Sensors 2023, 23, 2714. [Google Scholar] [CrossRef] [PubMed]
- Akansah, E.; Senoo, E.E.K.; Mendonça, I.; Aritsugi, M. Smart agricultural monitoring system: A practical design approach. In Proceedings of the 12th International Conference on the Internet of Things, New York, NY, USA, 7–10 November 2022; IoT’22. pp. 139–142. [Google Scholar] [CrossRef]
- Agrawal, A.V.; Magulur, L.P.; Priya, S.G.; Kaur, A.; Singh, G.; Boopathi, S. Smart precision agriculture using IoT and WSN. In Handbook of Research on Data Science and Cybersecurity Innovations in Industry 4.0 Technologies; IGI Global: Hershey, PA, USA, 2023; pp. 524–541. [Google Scholar] [CrossRef]
- Mendonça, I.; Chong, A.; Aritsugi, M. Not Seeing is a Flower: Experiences and Lessons Learned from Making IoT Platforms for Small-Scale Farms in Japan. In Proceedings of the 13th International Conference on the Internet of Things, New York, NY, USA, 10–13 November 2023; IoT’23. pp. 146–149. [Google Scholar] [CrossRef]
- Balatsouras, C.P.; Karras, A.; Karras, C.; Karydis, I.; Sioutas, S. WiCHORD+: A Scalable, Sustainable, and P2P Chord-Based Ecosystem for Smart Agriculture Applications. Sensors 2023, 23, 9486. [Google Scholar] [CrossRef] [PubMed]
- Dawn, N.; Ghosh, T.; Ghosh, S.; Saha, A.; Mukherjee, P.; Sarkar, S.; Guha, S.; Sanyal, T. Implementation of Artificial Intelligence, Machine Learning, and Internet of Things (IoT) in revolutionizing Agriculture: A review on recent trends and challenges. Int. J. Exp. Res. Rev. 2023, 30, 190–218. [Google Scholar] [CrossRef]
- Zahra, A.; Qureshi, R.; Sajjad, M.; Sadak, F.; Nawaz, M.; Khan, H.A.; Uzair, M. Current advances in imaging spectroscopy and its state-of-the-art applications. Expert Syst. Appl. 2024, 238, 122172. [Google Scholar] [CrossRef]
- Xiao, G.; Samian, N.; Mohd Faizal, M.F.; Mohd As’ad, M.A.Z.; Mohamad Fadzil, M.F.; Abdullah, A.; Seah, W.K.G.; Ishak, M.; Hermadi, I. A Framework for Blockchain and Internet of Things Integration in Improving Food Security in the Food Supply Chain. J. Adv. Res. Appl. Sci. Eng. Technol. 2023, 34, 24–37. [Google Scholar] [CrossRef]
- de Melo, D.A.; Silva, P.C.; da Costa, A.R.; Delmond, J.G.; Ferreira, A.F.A.; de Souza, J.A.; de Oliveira-Júnior, J.F.; da Silva, J.L.B.; da Rosa Ferraz Jardim, A.M.; Giongo, P.R.; et al. Development and Automation of a Photovoltaic-Powered Soil Moisture Sensor for Water Management. Hydrology 2023, 10, 166. [Google Scholar] [CrossRef]
- Payero, J.O. An Effective and Affordable Internet of Things (IoT) Scale System to Measure Crop Water Use. AgriEngineering 2024, 6, 823–840. [Google Scholar] [CrossRef]
- Miao, R.; Khanna, M. Harnessing Advances in Agricultural Technologies to Optimize Resource Utilization in the Food-Energy-Water Nexus. Annu. Rev. Resour. Econ. 2020, 12, 65–85. [Google Scholar] [CrossRef]
- Zhivkov, T.; Sklar, E.I.; Botting, D.; Pearson, S. 5G on the Farm: Evaluating Wireless Network Capabilities and Needs for Agricultural Robotics. Machines 2023, 11, 1064. [Google Scholar] [CrossRef]
- Avşar, E.; Mowla, M.N. Wireless communication protocols in smart agriculture: A review on applications, challenges and future trends. Ad Hoc Netw. 2022, 136, 102982. [Google Scholar] [CrossRef]
- Gonzalez, C.; Gibeaux, S.; Ponte, D.; Espinosa, A.; Pitti, J.; Nolot, F. An Exploration of LoRa Network in Tropical Farming Environment. In Proceedings of the 2022 IEEE 2nd International Conference on Computer Communication and Artificial Intelligence (CCAI), Beijing, China, 6–8 May 2022; pp. 182–186. [Google Scholar] [CrossRef]
- Cariou, C.; Moiroux-Arvis, L.; Pinet, F.; Chanet, J.P. Internet of Underground Things in Agriculture 4.0: Challenges, Applications and Perspectives. Sensors 2023, 23, 4058. [Google Scholar] [CrossRef] [PubMed]
- Di Renzone, G.; Parrino, S.; Peruzzi, G.; Pozzebon, A.; Bertoni, D. LoRaWAN Underground to Aboveground Data Transmission Performances for Different Soil Compositions. IEEE Trans. Instrum. Meas. 2021, 70, 1–13. [Google Scholar] [CrossRef]
- Abu, N.; Bukhari, W.; Ong, C.; Kassim, A.; Izzuddin, T.; Sukhaimie, M.; Norasikin, M.; Rasid, A. Internet of Things Applications in Precision Agriculture: A Review. J. Robot. Control (JRC) 2022, 3, 338–347. [Google Scholar] [CrossRef]
- Shi, X.; An, X.; Zhao, Q.; Liu, H.; Xia, L.; Sun, X.; Guo, Y. State-of-the-Art Internet of Things in Protected Agriculture. Sensors 2019, 19, 1833. [Google Scholar] [CrossRef] [PubMed]
- Kumar, A.; Ratan, R. A Literature Review on Monitoring and Control Strategies in Smart Agriculture Using IoT. In Artificial Intelligence: Theory and Applications; Sharma, H., Chakravorty, A., Hussain, S., Kumari, R., Eds.; Springer: Singapore, 2024; pp. 299–311. [Google Scholar] [CrossRef]
- Polymeni, S.; Plastras, S.; Skoutas, D.N.; Kormentzas, G.; Skianis, C. The Impact of 6G-IoT Technologies on the Development of Agriculture 5.0: A Review. Electronics 2023, 12, 2651. [Google Scholar] [CrossRef]
- Shrestha, M.M.; Wei, L. Review—Perspectives on the Roles of Real time Nitrogen Sensing and IoT Integration in Smart Agriculture. J. Electrochem. Soc. 2024, 171, 027526. [Google Scholar] [CrossRef]
- Widianto, M.H.; Juarto, B. Smart Farming Using Robots in IoT to Increase Agriculture Yields: A Systematic Literature Review. J. Robot. Control (JRC) 2023, 4, 330–341. [Google Scholar] [CrossRef]
- Fondaj, J.; Hamiti, M.; Krrabaj, S.; Ajdari, J.; Zenuni, X. A Prediction Model of Smart Agriculture Based on IoT Sensor Data: A Systematic Literature Review. In Proceedings of the 2023 12th Mediterranean Conference on Embedded Computing (MECO), Budva, Montenegro, 6–10 June 2023; pp. 1–8. [Google Scholar] [CrossRef]
- Dewari, S.; Gupta, M.; Kumar, R.; Obaid, A.J.; AL-Hameed, M.R. A Review Analysis on Measuring the Soil Characteristic in Agriculture Using Artificial Intelligence and IOT. In Micro-Electronics and Telecommunication Engineering; Sharma, D.K., Peng, S.L., Sharma, R., Jeon, G., Eds.; Springer: Singapore, 2023; pp. 325–334. [Google Scholar] [CrossRef]
- Zamir, M.A.; Sonar, R.M. Application of Internet of Things (IoT) in Agriculture: A Review. In Proceedings of the 2023 8th International Conference on Communication and Electronics Systems (ICCES), Coimbatore, India, 1–3 August 2023; pp. 425–431. [Google Scholar] [CrossRef]
- M, R.; Gomathy, C. Revolutionizing Agriculture with IoT—A Review. In Proceedings of the 2023 4th International Conference on Smart Electronics and Communication (ICOSEC), Trichy, India, 20–22 September 2023; pp. 370–381. [Google Scholar] [CrossRef]
- Singh, G.; Singh, J. Transformative Potential of IoT for Developing Smart Agriculture System: A Systematic Review. In Proceedings of the 2023 4th International Conference on Communication, Computing and Industry 6.0 (C216), Bangalore, India, 15–16 December 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Chataut, R.; Phoummalayvane, A.; Akl, R. Unleashing the Power of IoT: A Comprehensive Review of IoT Applications and Future Prospects in Healthcare, Agriculture, Smart Homes, Smart Cities, and Industry 4.0. Sensors 2023, 23, 7194. [Google Scholar] [CrossRef] [PubMed]
- Bulut, C.; Wu, P.F. More than two decades of research on IoT in agriculture: A systematic literature review. Internet Res. 2023. [Google Scholar] [CrossRef]
- Singh, A.P.; Singh, A.P.; Sahu, P.; Chug, A.; Chug, A.; Singh, D. A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop. IEEE Access 2022, 10, 87333–87360. [Google Scholar] [CrossRef]
- Sharma, R.; Kamble, S.S.; Gunasekaran, A.; Gunasekaran, A.; Kumar, V.; Kumar, A.; Kumar, A.; Kumar, A. A systematic literature review on machine learning applications for sustainable agriculture supply chain performance. Comput. Oper. Res. 2020, 119, 104926. [Google Scholar] [CrossRef]
- Cravero, A.; Sepúlveda, S. Use and Adaptations of Machine Learning in Big Data—Applications in Real Cases in Agriculture. Electronics 2021, 5, 552. [Google Scholar] [CrossRef]
- Mirani, A.A.; Memon, M.S.; Chohan, R.; Wagan, A.A.; Qabulio, M. Machine Learning in Agriculture: A Review. Int. J. Sci. Technol. Res. 2021, 10, 229–234. [Google Scholar]
- Jhajharia, K.; Mathur, P.; Mathur, P. A comprehensive review on machine learning in agriculture domain. IAES Int. J. Artif. Intell. 2022, 11, 753. [Google Scholar] [CrossRef]
- Gill, A.; Kaur, T.; Devi, Y.K. Application of Machine Learning Techniques in Modern Agriculture: A Review. In Proceedings of the 2022 Fourteenth International Conference on Contemporary Computing, Noida, India, 4–6 August 2022; IC3-2022. pp. 263–270. [Google Scholar] [CrossRef]
- Mekonnen, Y.; Namuduri, S.; Burton, L.; Sarwat, A.I.; Sarwat, A.I.; Bhansali, S. Review—Machine Learning Techniques in Wireless Sensor Network Based Precision Agriculture. J. Electrochem. Soc. 2020, 167, 037522. [Google Scholar] [CrossRef]
- Oliveira, R.C.d.; Silva, R.D.d.S.e. Artificial Intelligence in Agriculture: Benefits, Challenges, and Trends. Appl. Sci. 2023, 13, 7405. [Google Scholar] [CrossRef]
- Shaikh, F.K.; Memon, M.A.; Mahoto, N.A.; Zeadally, S.; Nebhen, J. Artificial Intelligence Best Practices in Smart Agriculture. IEEE Micro 2022, 42, 17–24. [Google Scholar] [CrossRef]
- Rinkesh, P.; Aditi, C. Machine Learning for Precise Crop Management in Agriculture: A Review. Int. J. Creat. Res. Thoughts (IJCRT) 2022, 10, 43–58. [Google Scholar]
- Condran, S.; Bewong, M.; Islam, M.Z.; Maphosa, L.; Maphosa, L.; Zheng, L. Machine Learning in Precision Agriculture: A Survey on Trends, Applications and Evaluations Over Two Decades. IEEE Access 2022, 10, 73786–73803. [Google Scholar] [CrossRef]
- Kumar, R.; Chug, A.; Chug, A.; Singh, A.P.; Singh, A.P.; Singh, D. A Systematic Analysis of Machine Learning and Deep Learning Based Approaches for Plant Leaf Disease Classification: A Review. J. Sens. 2022, 2022, 3287561. [Google Scholar] [CrossRef]
- Setiawan, W.; Rochman, E.; Satoto, B.D.; Rachmad, A. Machine Learning and Deep Learning for Maize Leaf Disease Classification: A Review. J. Phys. Conf. Ser. 2022, 2406, 012019. [Google Scholar] [CrossRef]
- Suharso, A.; Hediyeni, Y.; Tarigan, S.; Arkeman, Y. The Role of Machine Learning in Remote Sensing for Agriculture Drought Monitoring: A Systematic Review. Int. J. Adv. Comput. Sci. Appl. 2022, 13, 764–771. [Google Scholar] [CrossRef]
- Shahi, T.B.; Xu, C.Y.; Neupane, A.; Guo, W. Machine learning methods for precision agriculture with UAV imagery: A review. Electron. Res. Arch. 2022, 30, 4277–4317. [Google Scholar] [CrossRef]
- Falana, O.B.; Durodola, O.I. Multimodal Remote Sensing and Machine Learning for Precision Agriculture: A Review. J. Eng. Res. Rep. 2022, 23, 30–34. [Google Scholar] [CrossRef]
- Chlingaryan, A.; Sukkarieh, S.; Whelan, B. Machine learning approaches for crop yield prediction and nitrogen status estimation in precision agriculture: A review. Comput. Electron. Agric. 2018, 151, 61–69. [Google Scholar] [CrossRef]
- Sunil, G.L.; Nagaveni, V.; Shruthi, U. A Review on Prediction of Crop Yield using Machine Learning Techniques. In Proceedings of the 2022 IEEE Region 10 Symposium (TENSYMP), Mumbai, India, 1–3 July 2022; pp. 1–5. [Google Scholar] [CrossRef]
- Aherwadi, N.; Mittal, U. Fruit quality identification using image processing, machine learning, and deep learning: A review. Adv. Appl. Math. Sci. 2022, 21, 2645–2660. [Google Scholar]
- Dhiman, B.; Kumar, Y.; Kumar, M. Fruit quality evaluation using machine learning techniques: Review, motivation and future perspectives. Multimed. Tools Appl. 2022, 81, 16255–16277. [Google Scholar] [CrossRef]
- Qazi, S.; Khawaja, B.A.; Farooq, Q.U. IoT-Equipped and AI-Enabled Next Generation Smart Agriculture: A Critical Review, Current Challenges and Future Trends. IEEE Access 2022, 10, 21219–21235. [Google Scholar] [CrossRef]
- Pathan, M.; Patel, N.; Yagnik, H.; Shah, M. Artificial cognition for applications in smart agriculture: A comprehensive review. Artif. Intell. Agric. 2020, 4, 81–95. [Google Scholar] [CrossRef]
- Singh, D.K.; Sobti, R. Role of Internet of Things and Machine Learning in Precision Agriculture: A Short Review. In Proceedings of the 2021 6th International Conference on Signal Processing, Computing and Control (ISPCC), Solan, India, 7–9 November 2021; pp. 750–754. [Google Scholar] [CrossRef]
- Tondato de Faria, B.; Tercete, G.M.; Filev Maia, R. The effectiveness of IoT and machine learning in Precision Agriculture. In Proceedings of the 2022 Symposium on Internet of Things (SIoT), Sao Paulo, Brazil, 24–28 October 2022; pp. 1–4. [Google Scholar] [CrossRef]
- Swamidason, I.T.J.; Pandiyarajan, S.; Velswamy, K.; Jancy, P.L. Futuristic IoT based Smart Precision Agriculture: Brief Analysis. J. Mob. Multimed. 2022, 18, 935–956. [Google Scholar] [CrossRef]
- Alahmad, T.; Neményi, M.; Nyéki, A. Applying IoT Sensors and Big Data to Improve Precision Crop Production: A Review. Agronomy 2023, 13, 2603. [Google Scholar] [CrossRef]
- Keru Patil, R.; Patil, S.S. Cognitive Intelligence of a Cloud-Based Internet of Things in Precision Agriculture Applications. In Proceedings of the 2022 IEEE International Conference on Blockchain and Distributed Systems Security (ICBDS), Pune, India, 16–18 September 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Gupta, L.; Malhotra, S.; Kumar, A. Study of applications of Internet of Things and Machine Learning for Smart Agriculture. In Proceedings of the 2022 IEEE International Conference on Current Development in Engineering and Technology (CCET), Bhopal, India, 23–24 December 2022; pp. 1–5. [Google Scholar] [CrossRef]
- Baghel, S.S.; Rawat, P.; Singh, R.; Akram, S.V.; Pandey, S.; Baghel, A.S. AI, IoT and Cloud Computing Based Smart Agriculture. In Proceedings of the 2022 5th International Conference on Contemporary Computing and Informatics (IC3I), Uttar Pradesh, India, 14–16 December 2022; pp. 1658–1661. [Google Scholar] [CrossRef]
- Hegedűs, C.; Frankó, A.; Varga, P.; Gindl, S.; Tauber, M. Enabling Scalable Smart Vertical Farming with IoT and Machine Learning Technologies. In Proceedings of the NOMS 2023-2023 IEEE/IFIP Network Operations and Management Symposium, Miami, FL, USA, 8–12 May 2023; pp. 1–4. [Google Scholar] [CrossRef]
- Bu, F.; Wang, X. A smart agriculture IoT system based on deep reinforcement learning. Future Gener. Comput. Syst. 2019, 99, 500–507. [Google Scholar] [CrossRef]
- Aggarwal, M.; Khullar, V.; Goyal, N. Contemporary and Futuristic Intelligent Technologies for Rice Leaf Disease Detection. In Proceedings of the 2022 10th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions) (ICRITO), Noida, India, 13–14 October 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Sharma, A.; Sharma, A.; Jain, A.; Jain, A.; Gupta, P.; Gupta, P.; Chowdary, V. Machine Learning Applications for Precision Agriculture: A Comprehensive Review. IEEE Access 2021, 9, 4843–4873. [Google Scholar] [CrossRef]
- Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 statement: An updated guideline for reporting systematic reviews. BMJ 2021, 372, 790–799. [Google Scholar] [CrossRef] [PubMed]
- Chiwamba, S.H.; Phiri, J.; Nkunika, P.O.; Sikasote, C.; Kabemba, M.M.; Moonga, M.N. Automated fall armyworm (Spodoptera frugiperda, J.E. Smith) pheromone trap based on machine learning. J. Comput. Sci. 2019, 15, 1759–1779. [Google Scholar] [CrossRef]
- Sasi Supritha Devi, Y.; Kesava Durga Prasad, T.; Saladi, K.; Nandan, D. Analysis of Precision Agriculture Technique by Using Machine Learning and IoT. Adv. Intell. Syst. Comput. 2020, 1154, 859–867. [Google Scholar] [CrossRef]
- Kempegowda, B.; Mohammed, F.; Ullas, C.; Hema, C.; Sonakshi, S. Application of IOT and Machine Learning in Crop Protection against Animal Intrusion. Glob. Transit. Proc. 2021, 2, 169–174. [Google Scholar] [CrossRef]
- Singh, A.; Nawayseh, N.; Singh, H.; Dhabi, Y.K.; Samuel, S. Internet of agriculture: Analyzing and predicting tractor ride comfort through supervised machine learning. Eng. Appl. Artif. Intell. 2023, 125, 106720. [Google Scholar] [CrossRef]
- Rodríguez, J.P.; Montoya-Munoz, A.I.; Rodriguez-Pabon, C.; Hoyos, J.; Corrales, J.C. IoT-Agro: A smart farming system to Colombian coffee farms. Comput. Electron. Agric. 2021, 190, 106442. [Google Scholar] [CrossRef]
- Kolvekar, K.; Lotlikar, S.; Naik, M.; Faldesai, A.; Muttu, Y.; Colaco, M. Cayenne based Plant Monitoring Control System. In Proceedings of the 2020 IEEE Bombay Section Signature Conference (IBSSC), Mumbai, India, 4–6 December 2020; pp. 237–242. [Google Scholar] [CrossRef]
- Dineva, K.; Atanasova, T. Health Status Classification for Cows Using Machine Learning and Data Management on AWS Cloud. Animals 2023, 13, 3254. [Google Scholar] [CrossRef] [PubMed]
- Mukherjee, A.; Panja, A.K.; Dey, N.; Crespo, R.G. An intelligent edge enabled 6G-flying ad hoc network ecosystem for precision agriculture. Expert Syst. 2023, 40, e13090. [Google Scholar] [CrossRef]
- Al-Tarawneh, L.; Mehyar, A.; Alasasaf, S.E.; Al-Mariat, M. Environmental Tracking System using IoT Based WSN: Smart Agriculture. In Proceedings of the 2022 4th IEEE Middle East and North Africa COMMunications Conference (MENACOMM), Amman, Jordan, 6–8 December 2022; pp. 147–152. [Google Scholar] [CrossRef]
- Shi, Z.; Zhang, Z.; Jia, Y.; Li, J.; Wang, X.; Qiu, Y.; Miao, J.; Chang, F.; Han, X.; Tang, W. Internet-of- Things Behavior Monitoring System Based on Wearable Inertial Sensors for Classifying Dairy Cattle Health Using Machine Learning. In Proceedings of the 2023 IEEE International Conference on Artificial Intelligence in Engineering and Technology (IICAIET), Kota Kinabalu, Malaysia, 12–14 September 2023; pp. 277–282. [Google Scholar] [CrossRef]
- Prasad, D.S.; Mounika, N.; Sekhar, N.R.; Thakur, G. Design of Farmer Assistance System Through IoT/ML. In E3S Web of Conferences; EDP Sciences: Les Ulis, France, 2023; Volume 430. [Google Scholar] [CrossRef]
- Kamath, R.; Balachandra, M.; Prabhu, S. Raspberry Pi as Visual Sensor Nodes in Precision Agriculture: A Study. IEEE Access 2019, 7, 45110–45122. [Google Scholar] [CrossRef]
- Indhumathi, S.; Aghalya, S.; Smitha, J.A.; Aarthi, M.P. IoT-Enabled Weather Monitoring and Rainfall Prediction using Machine Learning Algorithm. In Proceedings of the 2023 Second International Conference on Augmented Intelligence and Sustainable Systems (ICAISS), Trichy, India, 23–25 August 2023; pp. 1491–1495. [Google Scholar] [CrossRef]
- Barriga, A.; Barriga, J.A.; Moñino, M.J.; Clemente, P.J. IoT-based expert system for fault detection in Japanese Plum leaf-turgor pressure WSN. Internet Things 2023, 23, 100829. [Google Scholar] [CrossRef]
- Alfian, G.; Syafrudin, M.; Farooq, U.; Ma’arif, M.R.; Syaekhoni, M.A.; Fitriyani, N.L.; Lee, J.; Rhee, J. Improving efficiency of RFID-based traceability system for perishable food by utilizing IoT sensors and machine learning model. Food Control 2020, 110, 107016. [Google Scholar] [CrossRef]
- Chen, Y.A.; Hsieh, W.H.; Ko, Y.S.; Huang, N.F. An Ensemble Learning Model for Agricultural Irrigation Prediction. In Proceedings of the 2021 International Conference on Information Networking (ICOIN), Jeju Island, South Korea, 13–16 January 2021; pp. 311–316. [Google Scholar] [CrossRef]
- Duan, Q.; Xiao, X.; Liu, Y.; Zhang, L.; Wang, K. Data fusion method of livestock and poultry breeding internet of things based on improved support function. Nongye Gongcheng Xuebao/Transactions Chin. Soc. Agric. Eng. 2017, 33, 239–245. [Google Scholar] [CrossRef]
- Teixeira, R.; Puccinelli, J.; de Vargas Guterres, B.; Pias, M.R.; Oliveira, V.M.; Botelho, S.S.d.C.; Poersch, L.; Filho, N.D.; Janati, A.; Paris, M. Planetary digital twin: A case study in aquaculture. In Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing, New York, NY, USA, 25–29 April 2022; SAC’22. pp. 191–197. [Google Scholar] [CrossRef]
- Pratama, Y.P.; Kurnia Basuki, D.; Sukaridhoto, S.; Yusuf, A.A.; Yulianus, H.; Faruq, F.; Putra, F.B. Designing of a Smart Collar for Dairy Cow Behavior Monitoring with Application Monitoring in Microservices and Internet of Things-Based Systems. In Proceedings of the 2019 International Electronics Symposium (IES), Surabaya, Indonesia, 27–28 September 2019; pp. 527–533. [Google Scholar] [CrossRef]
- Nugroho, E.D.; Putrada, A.G.; Rakhmatsyah, A. Predictive Control on Lettuce NFT-based Hydroponic IoT using Deep Neural Network. In Proceedings of the 2021 International Symposium on Electronics and Smart Devices (ISESD), Bandung, Indonesia, 29–30 June 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Ubina, N.A.; Lan, H.Y.; Cheng, S.C.; Chang, C.C.; Lin, S.S.; Zhang, K.X.; Lu, H.Y.; Cheng, C.Y.; Hsieh, Y.Z. Digital twin-based intelligent fish farming with Artificial Intelligence Internet of Things (AIoT). Smart Agric. Technol. 2023, 5, 100285. [Google Scholar] [CrossRef]
- Priya, G.L.; Baskar, C.; Deshmane, S.S.; Adithya, C.; Das, S. Revolutionizing Holy-Basil Cultivation with AI-Enabled Hydroponics System. IEEE Access 2023, 11, 82624–82639. [Google Scholar] [CrossRef]
- Astillo, P.V.; Kim, J.; Sharma, V.; You, I. SGF-MD: Behavior rule specification-based distributed misbehavior detection of embedded iot devices in a closed-loop smart greenhouse farming system. IEEE Access 2020, 8, 196235–196252. [Google Scholar] [CrossRef]
- Gia, T.N.; Qingqing, L.; Queralta, J.P.; Zou, Z.; Tenhunen, H.; Westerlund, T. Edge AI in Smart Farming IoT: CNNs at the Edge and Fog Computing with LoRa. In Proceedings of the 2019 IEEE AFRICON, Accra, Ghana, 25–27 September 2019; pp. 1–6. [Google Scholar] [CrossRef]
- Abu-Khadrah, A.; Ali, A.M.; Jarrah, M. An Amendable Multi-Function Control Method using Federated Learning for Smart Sensors in Agricultural Production Improvements. ACM Trans. Sens. Netw. 2023. [Google Scholar] [CrossRef]
- Arthi., R.; Nishuthan, S.; Deepak Vignesh, L.; Arthi., R.; Nishuthan, S.; Deepak Vignesh, L. Smart Agriculture System Using IoT and ML. In Proceedings of the 2023 International Conference on Signal Processing, Computation, Electronics, Power and Telecommunication (IConSCEPT), Karaikal, India, 25–26 May 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Li, H.; Li, S.; Yu, J.; Han, Y.; Dong, A. AIoT Platform Design Based on Front and Rear End Separation Architecture for Smart Agricultural. In Proceedings of the 2022 4th Asia Pacific Information Technology Conference, New York, NY, USA, 14–16 January 2022; APIT’22. pp. 208–214. [Google Scholar] [CrossRef]
- Mallikarjun, B.; Gowd, V.Y.; Gagan, S.; Vishwas, K.P.; Gagan Kumar, L. Precision Agriculture–Machine Learning Based Approach. In Proceedings of the 2023 11th International Conference on Internet of Everything, Microwave Engineering, Communication and Networks (IEMECON), Jaipur, India, 10–11 February 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Praveena, B.; Vijayalakshmi, S.; Lakshmi, K.C. IoT Based Water Showering Mechanism in Agriculture. In Proceedings of the 2022 International Conference on Power, Energy, Control and Transmission Systems (ICPECTS), Chennai, India, 8–9 December 2022; pp. 1–3. [Google Scholar] [CrossRef]
- Liu, Z.; Bashir, R.N.; Iqbal, S.; Shahid, M.M.A.; Tausif, M.; Umer, Q. Internet of Things (IoT) and Machine Learning Model of Plant Disease Prediction-Blister Blight for Tea Plant. IEEE Access 2022, 10, 44934–44944. [Google Scholar] [CrossRef]
- Kumar, T.A.; Rajmohan, R.; Ajagbe, S.A.; Gaber, T.; Zeng, X.J.; Masmoudi, F. A novel CNN gap layer for growth prediction of palm tree plantlings. PLoS ONE 2023, 18, e0289963. [Google Scholar] [CrossRef] [PubMed]
- Sheng, R.T.C.; Huang, Y.H.; Chan, P.C.; Bhat, S.A.; Wu, Y.C.; Huang, N.F. Rice Growth Stage Classification via RF-Based Machine Learning and Image Processing. Agriculture 2022, 12, 2137. [Google Scholar] [CrossRef]
- Cavaliere, D.; Senatore, S. Incremental Knowledge Extraction from IoT-Based System for Anomaly Detection in Vegetation Crops. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 2022, 15, 876–888. [Google Scholar] [CrossRef]
- Pothuganti, K.; Sridevi, B.; Seshabattar, P. IoT and Deep Learning based Smart Greenhouse Disease Prediction. In Proceedings of the 2021 International Conference on Recent Trends on Electronics Information, Communication & Technology (RTEICT), Bangalore, India, 27–28 August 2021; pp. 793–799. [Google Scholar] [CrossRef]
- Mandakini, C. Automatic Irrigation and Crop Monitoring System Using IoT and Deep Learning. Adv. Comput. Sci. Technol. 2023, 16, 1–11. [Google Scholar] [CrossRef]
- Arepalli, P.G.; Jairam Naik, K. An IoT based smart water quality assessment framework for aqua-ponds management using Dilated Spatial-temporal Convolution Neural Network (DSTCNN). Aquac. Eng. 2024, 104, 102373. [Google Scholar] [CrossRef]
- Agossou, B.E.; Toshiro, T. IoT & AI Based System for Fish Farming: Case study of Benin. In Proceedings of the Conference on Information Technology for Social Good; New York, NY, USA, 9–11 September 2021, GoodIT’21; pp. 259–264. [CrossRef]
- Mamatha, V.; Kavitha, J.C. Remotely monitored Web based Smart Hydroponics System for Crop Yield Prediction using IoT. In Proceedings of the 2023 IEEE 8th International Conference for Convergence in Technology (I2CT), Lonavla, India, 7–9 April 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Bhargava, Y.V.; Chittoor, P.K.; Bharatiraja, C.; Verma, R.; Sathiyasekar, K. Sensor Fusion Based Intelligent Hydroponic Farming and Nursing System. IEEE Sens. J. 2022, 22, 14584–14591. [Google Scholar] [CrossRef]
- Taufiqurrahman, A.; Putrada, A.G.; Dawani, F. Decision Tree Regression with AdaBoost Ensemble Learning for Water Temperature Forecasting in Aquaponic Ecosystem. In Proceedings of the 2020 6th International Conference on Interactive Digital Media (ICIDM), Bandung, Indonesia, 11–15 December 2020; pp. 1–5. [Google Scholar] [CrossRef]
- Arvind, C.S.; Jyothi, R.; Kaushal, K.; Girish, G.; Saurav, R.; Chetankumar, G. Edge Computing Based Smart Aquaponics Monitoring System Using Deep Learning in IoT Environment. In Proceedings of the 2020 IEEE Symposium Series on Computational Intelligence (SSCI), Canberra, ACT, Australia, 1–4 December 2020; pp. 1485–1491. [Google Scholar] [CrossRef]
- Priya, P.K.; Yuvaraj, N. An IoT Based Gradient Descent Approach for Precision Crop Suggestion using MLP. J. Phys. Conf. Ser. 2019, 1362, 012038. [Google Scholar] [CrossRef]
- Anindya, D.S.; Yuliana, M.; Samsono Hadi, M.Z. IoT Based Climate Prediction System Using Long Short-Term Memory (LSTM) Algorithm as Part of Smart Farming 4.0. In Proceedings of the 2022 International Electronics Symposium (IES), Surabaya, Indonesia, 9–11 August 2022; pp. 255–260. [Google Scholar] [CrossRef]
- Khan, A.A.; Faheem, M.; Bashir, R.N.; Wechtaisong, C.; Abbas, M.Z. Internet of Things (IoT) Assisted Context Aware Fertilizer Recommendation. IEEE Access 2022, 10, 129505–129519. [Google Scholar] [CrossRef]
- Harakannanavar, S.S.; Joshitha, T.; Thejashree, V. Intelligent Agriculture Using Machine Learning and Internet of Things. In Proceedings of the 2023 International Conference on Data Science and Network Security (ICDSNS), Tiptur, India, 28–29 July 2023; pp. 1–5. [Google Scholar] [CrossRef]
- Chandra, K.U.; Teja, R.S.; Arelli, S.; Das, D. CattleCare: IoT-Based Smart Collar for Automatic Continuous Vital and Activity Monitoring of Cattle. In Proceedings of the 2022 International Conference on Futuristic Technologies (INCOFT), Belgaum, India, 25–27 November 2022; pp. 1–7. [Google Scholar] [CrossRef]
- Arefin Hossain, M.I.; Kiser, A.; Mitu, I.J.; Binta Haque, S.M. Intelligent IoT-based Combined Crop-type and Disease Prediction System with Different Machine Learning & Deep Learning Techniques. In Proceedings of the 2023 10th International Conference on Electrical Engineering, Computer Science and Informatics (EECSI), Palembang, Indonesia, 20–21 September 2023; pp. 412–417. [Google Scholar] [CrossRef]
- Gopi, A.P.; Swathi, V.; Harshitha, G.S.; Swetha, B.; Alekhya, N. Prediction of Paddy Yield based on IoT Data using GRU Model in Lowland Coastal Regions. In Proceedings of the 2023 5th International Conference on Smart Systems and Inventive Technology (ICSSIT), Tirunelveli, India, 23–25 January 2023; pp. 1747–1752. [Google Scholar] [CrossRef]
- Chen, L.B.; Huang, X.R.; Chen, W.H. Design and Implementation of an Artificial Intelligence of Things-Based Autonomous Mobile Robot System for Pitaya Harvesting. IEEE Sens. J. 2023, 23, 13220–13235. [Google Scholar] [CrossRef]
- Mathi, S.; Akshaya, R.; Sreejith, K. An Internet of Things-based Efficient Solution for Smart Farming. Procedia Comput. Sci. 2023, 218, 2806–2819. [Google Scholar] [CrossRef]
- Mestre, G.; Matos-Carvalho, J.P.; Tavares, R.M. Irrigation Management System using Artificial Intelligence Algorithms. In Proceedings of the 2022 International Young Engineers Forum (YEF-ECE), Caparica/Lisbon, Portugal, 1 July 2022; pp. 69–74. [Google Scholar] [CrossRef]
- Patle, K.S.; Saini, R.; Kumar, A.; Palaparthy, V.S. Field Evaluation of Smart Sensor System for Plant Disease Prediction Using LSTM Network. IEEE Sens. J. 2022, 22, 3715–3725. [Google Scholar] [CrossRef]
- Rastog, R.; Bhardwaj, M.; Sharma, A. Crop and Yield Prediction Through Machine Learning Techniques to Maximize Production: 21st Century Sustainable Approach for Smart Cities 5.0. In Proceedings of the 2022 4th International Conference on Advances in Computing, Communication Control and Networking (ICAC3N), Greater Noida, India, 16–17 December 2022; pp. 1286–1291. [Google Scholar] [CrossRef]
- Sharma, R.P.; Dharavath, R.; Edla, D.R. IoFT-FIS: Internet of farm things based prediction for crop pest infestation using optimized fuzzy inference system. Internet Things 2023, 21, 100658. [Google Scholar] [CrossRef]
- Perales Gómez, A.L.; López-de Teruel, P.E.; Ruiz, A.; García-Mateos, G.; Bernabé García, G.; García Clemente, F.J. FARMIT: Continuous assessment of crop quality using machine learning and deep learning techniques for IoT-based smart farming. Clust. Comput. 2022, 25, 2163–2178. [Google Scholar] [CrossRef]
- Shabani, I.; Biba, T.; Çiço, B. Design of a Cattle-Health-Monitoring System Using Microservices and IoT Devices. Computers 2022, 11, 79. [Google Scholar] [CrossRef]
- Lee, S.; Ahn, H.; Seo, J.; Chung, Y.; Park, D.; Pan, S. Practical Monitoring of Undergrown Pigs for IoT-Based Large-Scale Smart Farm. IEEE Access 2019, 7, 173796–173810. [Google Scholar] [CrossRef]
- Ni, C.T.; Ng, K.S.; Chen, Y.R.; Chang, S.C.; Hsu, C.B.; Chen, P.Y.; Liao, S.C. A System for Analyzing Pig’s Behavior with AI. In Proceedings of the 2020 IEEE International Conference on Consumer Electronics—Taiwan (ICCE-Taiwan), Taoyuan, Taiwan, 28–30 September 2020; pp. 1–2. [Google Scholar] [CrossRef]
- Sung, W.T.; Isa, I.G.T.; Hsiao, S.J. Designing Aquaculture Monitoring System Based on Data Fusion through Deep Reinforcement Learning (DRL). Electronics 2023, 12, 2032. [Google Scholar] [CrossRef]
- Chang, C.C.; Ubina, N.A.; Cheng, S.C.; Lan, H.Y.; Chen, K.C.; Huang, C.C. A Two-Mode Underwater Smart Sensor Object for Precision Aquaculture Based on AIoT Technology. Sensors 2022, 22, 7603. [Google Scholar] [CrossRef] [PubMed]
- Kalaichelvi, P.; Rani, T.; Sakthy, S.S.; Chidambara Raja, G.; Charan Reddy, P. Improving Drone Technology Performance In Crop Fertilization. In Proceedings of the 2023 International Conference on Networking and Communications (ICNWC), Chennai, India, 5–6 April 2023; pp. 1–7. [Google Scholar] [CrossRef]
- Ekanayake, D.; de Alwis, P.; Harshana, P.; Munasinghe, D.; Jayakody, A.; Gamage, M.N. A Smart Aquaponic System for Enhancing The Revenue of Farmers in Sri Lanka. In Proceedings of the 2022 International Conference on ICT for Smart Society (ICISS), Bandung, Indonesia, 10–11 August 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Adidrana, D.; Surantha, N. Hydroponic Nutrient Control System based on Internet of Things and K-Nearest Neighbors. In Proceedings of the 2019 International Conference on Computer, Control, Informatics and its Applications (IC3INA), Tangerang, Indonesia, 23–24 October 2019; pp. 166–171. [Google Scholar] [CrossRef]
- Tahir, S.; Hafeez, Y.; Qamar, F.; Alwakid, G.N. Intelli-farm: IoT based Smart farming using Machine learning approaches. In Proceedings of the 2023 International Conference on Business Analytics for Technology and Security (ICBATS), Dubai, United Arab Emirates, 7–8 March 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Singh, R.; Srivastava, S.; Mishra, R. AI and IoT Based Monitoring System for Increasing the Yield in Crop Production. In Proceedings of the 2020 International Conference on Electrical and Electronics Engineering (ICE3), Gorakhpur, India, 14–15 February 2020; pp. 301–305. [Google Scholar] [CrossRef]
- Harshith, D.G.; Surve, S.; Seeju Prasad, S.N.; Ganesh, B.V.; Anuros Thomas, K. Remote Aquaculture Monitoring with Image Processing [ML] and AI. In Proceedings of the 2023 5th International Conference on Bio-engineering for Smart Technologies (BioSMART), Paris, France, 7–9 June 2023; pp. 1–4. [Google Scholar] [CrossRef]
- Rahman, H.; Faruq, M.O.; Abdul Hai, T.B.; Rahman, W.; Hossain, M.M.; Hasan, M.; Islam, S.; Moinuddin, M.; Islam, M.T.; Azad, M.M. IoT enabled mushroom farm automation with Machine Learning to classify toxic mushrooms in Bangladesh. J. Agric. Food Res. 2022, 7, 100267. [Google Scholar] [CrossRef]
- Edwards-Murphy, F.; Magno, M.; Whelan, P.M.; O’Halloran, J.; Popovici, E.M. B+WSN: Smart beehive with preliminary decision tree analysis for agriculture and honey bee health monitoring. Comput. Electron. Agric. 2016, 124, 211–219. [Google Scholar] [CrossRef]
- Lin, Y.B.; Lin, Y.W.; Kao, L.H. Anomaly Detection for Electric Energy Consumption in Smart Farms. IEEE Trans. AgriFood Electron. 2023, 1, 2–14. [Google Scholar] [CrossRef]
- Zinonos, Z.; Gkelios, S.; Khalifeh, A.F.; Hadjimitsis, D.G.; Boutalis, Y.S.; Chatzichristofis, S.A. Grape Leaf Diseases Identification System Using Convolutional Neural Networks and LoRa Technology. IEEE Access 2022, 10, 122–133. [Google Scholar] [CrossRef]
- Senevirathne, I.; Ambegoda, T.; Wijesena, R.; Perera, I. IoT-based Soil Nutrient Analyser using Gaussian Process Regression. In Proceedings of the 2022 2nd International Conference on Advanced Research in Computing (ICARC), Belihuloya, Sri Lanka, 23–24 February 2022; pp. 7–12. [Google Scholar] [CrossRef]
- Chen, C.J.; Li, Y.S.; Tai, C.Y.; Chen, Y.C.; Huang, Y.M. Pest incidence forecasting based on Internet of Things and Long Short-Term Memory Network. Appl. Soft Comput. 2022, 124, 108895. [Google Scholar] [CrossRef]
- Eridani, D.; Rochim, A.F.; Imago Dei Gloriawan, J. Robot Monitoring and Controlling Soybean Field Soil Condition Based on K-Nearest Neighbor Algorithm and Message Queuing Telemetry Transport Protocol. In Proceedings of the 2021 International Conference on Artificial Intelligence and Computer Science Technology (ICAICST), Yogyakarta, Indonesia, 29–30 June 2021; pp. 162–167. [Google Scholar] [CrossRef]
- Sarangi, S.; Naik, V.; Choudhury, S.B.; Jain, P.; Kosgi, V.; Sharma, R.; Bhatt, P.; Srinivasu, P. An Affordable IoT Edge Platform for Digital Farming in Developing Regions. In Proceedings of the 2019 11th International Conference on Communication Systems & Networks (COMSNETS), Bengaluru, India, 7–11 January 2019; pp. 556–558. [Google Scholar] [CrossRef]
- Afreen, H.; Bajwa, I.S. An IoT-Based Real-Time Intelligent Monitoring and Notification System of Cold Storage. IEEE Access 2021, 9, 38236–38253. [Google Scholar] [CrossRef]
- Nagasubramanian, G.; Sakthivel, R.K.; Patan, R.; Sankayya, M.; Daneshmand, M.; Gandomi, A.H. Ensemble Classification and IoT-Based Pattern Recognition for Crop Disease Monitoring System. IEEE Internet Things J. 2021, 8, 12847–12854. [Google Scholar] [CrossRef]
- Garg, S.; Pundir, P.; Jindal, H.; Saini, H.; Garg, S. Towards a Multimodal System for Precision Agriculture using IoT and Machine Learning. In Proceedings of the 2021 12th International Conference on Computing Communication and Networking Technologies (ICCCNT), Kharagpur, India, 6–8 July 2021; pp. 1–7. [Google Scholar] [CrossRef]
- Mrozek, D.; Gȯrny, R.; Wachowicz, A.; Małysiak-Mrozek, B. Edge-based detection of varroosis in beehives with iot devices with embedded and tpu-accelerated machine learning. Appl. Sci. 2021, 11, 11078. [Google Scholar] [CrossRef]
- Dharshini, A.; Monisha Menon, A.; Malini., B.; Vinoth Kumar, S. Method to prevent and track Locust’s Intrusion using Object Detection Algorithms. In Proceedings of the 2022 International Conference on Communication, Computing and Internet of Things (IC3IoT), Chennai, India, 10–11 March 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Jou, R.Y.; Li, W.J.; Shih, H.D.; Chiu, H.C. Research on Autonomous Mobile Intelligent IoT Platform in Mushroom Cultivation. In Proceedings of the 2022 IEEE 5th International Conference on Knowledge Innovation and Invention (ICKII), Hualien, Taiwan, 22–24 July 2022; pp. 184–188. [Google Scholar] [CrossRef]
- Royal, N.S.; Parre, W.; Bandarupalli, S.C.; Achary, M.R.; Jadala, D.C.; Kavitha, D.M. Internet of Things (IoT) and Machine Learning based Optimized Smart Irrigation System. In Proceedings of the 2023 5th International Conference on Smart Systems and Inventive Technology (ICSSIT), Tirunelveli, India, 23–25 January 2023; pp. 874–878. [Google Scholar] [CrossRef]
- Shreya, S.; Chatterjee, K.; Singh, A. BFSF: A secure IoT based framework for smart farming using blockchain. Sustain. Comput. Inform. Syst. 2023, 40. [Google Scholar] [CrossRef]
- Dahane, A.; Benameur, R.; Kechar, B. An Innovative Smart and Sustainable Low-cost Irrigation System for Smallholder Farmers’ Communities. In Proceedings of the 2022 3rd International Conference on Embedded & Distributed Systems (EDiS), Oran, Algeria, 2–3 November 2022; pp. 37–42. [Google Scholar] [CrossRef]
- Khan, A.; Aziz, S.; Bashir, M.; Khan, M.U. IoT and Wireless Sensor Network based Autonomous Farming Robot. In Proceedings of the 2020 International Conference on Emerging Trends in Smart Technologies (ICETST), Karachi, Pakistan, 26–27 March 2020; pp. 1–5. [Google Scholar] [CrossRef]
- Muhammad Masum, A.K.; Shahin, M.; Amzad Chy, M.K.; Islam Khan, S.; Shan-A-Alahi, A.; Rabiul Alam, M.G. Design and Implementation of IoT based Ideal Fish Farm in the Context of Bangladesh Aquaculture System. In Proceedings of the 2019 1st International Conference on Advances in Science, Engineering and Robotics Technology (ICASERT), Dhaka, Bangladesh, 3–5 May 2019; pp. 1–6. [Google Scholar] [CrossRef]
- Liu, L.; Qiao, X.; Liang, W.z.; Oboamah, J.; Wang, J.; Rudnick, D.R.; Yang, H.; Katimbo, A.; Shi, Y. An Edge-computing flow meter reading recognition algorithm optimized for agricultural IoT network. Smart Agric. Technol. 2023, 5, 100236. [Google Scholar] [CrossRef]
- Achour, B.; Belkadi, M.; Saddaoui, R.; Filali, I.; Aoudjit, R.; Laghrouche, M. High-accuracy and energy-efficient wearable device for dairy cows’ localization and activity detection using low-cost IMU/RFID sensors. Microsyst. Technol. 2022, 28, 1241–1251. [Google Scholar] [CrossRef]
- Petkovski, A.; Shehu, V. Anomaly Detection on Univariate Sensing Time Series Data for Smart Aquaculture Using K-Means, Isolation Forest, and Local Outlier Factor. In Proceedings of the 2023 12th Mediterranean Conference on Embedded Computing (MECO), Budva, Montenegro, 6–10 June 2023; pp. 1–5. [Google Scholar] [CrossRef]
- Routis, G.; Roussaki, I. Low Power IoT Electronics in Precision Irrigation. Smart Agric. Technol. 2023, 5, 100310. [Google Scholar] [CrossRef]
- Chou, C.Y.; Chang, S.C.; Zhong, Z.P.; Guo, M.C.; Hsieh, M.H.; Peng, J.C.; Tai, L.C.; Chung, P.L.; Wang, J.C.; Jiang, J.A. Development of AIoT System for facility asparagus cultivation. Comput. Electron. Agric. 2023, 206, 107665. [Google Scholar] [CrossRef]
- Ramasamy, S.; Chandrasekar, V.; Viswa Bharathy, A.M. Classification of Nutrient Deficiencies in Plants Using Recurrent Neural Network. In Proceedings of the 2022 IEEE Fourth International Conference on Advances in Electronics, Computers and Communications (ICAECC), Bengaluru, India, 10–11 January 2022; pp. 1–7. [Google Scholar] [CrossRef]
- Tomar, P.K.; Sobti, R.; Prasad, R.; Prasanna, K.L.; Jain, A.; Sharma, S. Implementation of Artificial Intelligence Technology for Better Irrigation System. In Proceedings of the 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE), Greater Noida, India, 12–13 May 2023; pp. 2766–2770. [Google Scholar] [CrossRef]
- Al-Faydi, S.N.M.; Al-Talb, H.N.Y. IoT and Artificial Neural Network-Based Water Control for Farming Irrigation System. In Proceedings of the 2022 2nd International Conference on Computing and Machine Intelligence (ICMI), Istanbul, Turkey, 15–16 July 2022; pp. 1–5. [Google Scholar] [CrossRef]
- Bhanu, K.N.; Sahana, K. Farm Vigilance: Smart IoT System for Farmland Monitoring and Animal Intrusion Detection using Neural Network. In Proceedings of the 2021 Asian Conference on Innovation in Technology (ASIANCON), Pune, India, 27–29 August 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Cagri Serdaroglu, K.; Onel, C.; Baydere, S. IoT Based Smart Plant Irrigation System with Enhanced learning. In Proceedings of the 2020 IEEE Computing, Communications and IoT Applications (ComComAp), Beijing, China, 20–22 December 2020; pp. 1–6. [Google Scholar] [CrossRef]
- Parvathi Sangeetha, B.; Kumar, N.; Ambalgi, A.P.; Abdul Haleem, S.L.; Thilagam, K.; Vijayakumar, P. IOT based smart irrigation management system for environmental sustainability in India. Sustain. Energy Technol. Assess. 2022, 52, 101973. [Google Scholar] [CrossRef]
- Wu, J.; Zhang, P.; Bao, X.; Li, W.; Tang, Z.; Cheng, B. Integrated Vegetable Supply System Based on Smart Contract and LSTM Prediction. In Proceedings of the 2023 International Conference on Consumer Electronics—Taiwan (ICCE-Taiwan), PingTung, Taiwan, 17–19 July 2023; pp. 397–398. [Google Scholar] [CrossRef]
- Zhang, J.; Yang, J.; Yang, Y.; Wan, X.; Jiang, X. Soil Volumetric Water Content Measurement Based on LoRa RSSI and UAV. In Proceedings of the 2023 IEEE 13th International Conference on CYBER Technology in Automation, Control, and Intelligent Systems (CYBER), Qinhuangdao, China, 11–14 July 2023; pp. 1386–1390. [Google Scholar] [CrossRef]
- Park, J.; Moon, A.; Lee, E.; Kim, S. Understanding IoT climate Data based Predictive Model for Outdoor Smart Farm. In Proceedings of the 2021 International Conference on Information and Communication Technology Convergence (ICTC), Jeju Island, Republic of Korea, 20–22 October 2021; pp. 1892–1894. [Google Scholar] [CrossRef]
- Rizwan, A.; Khan, A.N.; Ahmad, R.; Kim, D.H. Optimal Environment Control Mechanism Based on OCF Connectivity for Efficient Energy Consumption in Greenhouse. IEEE Internet Things J. 2023, 10, 5035–5049. [Google Scholar] [CrossRef]
- ATİK, C. Horizontal intervention, sectoral challenges: Evaluating the data act’s impact on agricultural data access puzzle in the emerging digital agriculture sector. Comput. Law Secur. Rev. 2023, 51, 105861. [Google Scholar] [CrossRef]
- Dobrescu, R.; Merezeanu, D.; Mocanu, S. Context-aware control and monitoring system with IoT and cloud support. Comput. Electron. Agric. 2019, 160, 91–99. [Google Scholar] [CrossRef]
- Mitchell, P.J.; Reicosky, D.C.; Kueneman, E.A.; Fisher, J.; Beck, D. Conservation agriculture systems. CABI Rev. 2019, 1–25. [Google Scholar] [CrossRef]
- Jackson, W. Natural systems agriculture: A truly radical alternative. Agric. Ecosyst. Environ. 2002, 88, 111–117. [Google Scholar] [CrossRef]
- Nižetić, S.; Šolić, P.; López-de-Ipiña González-de-Artaza, D.; Patrono, L. Internet of Things (IoT): Opportunities, issues and challenges towards a smart and sustainable future. J. Clean. Prod. 2020, 274, 122877. [Google Scholar] [CrossRef]
- Li, M. Analysis of New Embedded Simulation Technology based on Smart Internet of Things. In Proceedings of the 2023 International Conference on Applied Intelligence and Sustainable Computing (ICAISC), Dharwad, India, 16–17 June 2023; pp. 1–7. [Google Scholar] [CrossRef]
- Barriga, J.A.; Clemente, P.J. Designing and simulating IoT environments by using a model-driven approach. In Proceedings of the 2022 17th Iberian Conference on Information Systems and Technologies (CISTI), Madrid, Spain, 22–25 June 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Nicolas, C.; Naila, B.; Amar, R.C. TinyML Smart Sensor for Energy Saving in Internet of Things Precision Agriculture platform. In Proceedings of the 2022 Thirteenth International Conference on Ubiquitous and Future Networks (ICUFN), Barcelona, Spain, 5–8 July 2022; pp. 256–259. [Google Scholar] [CrossRef]
- Saxena, S.; Khare, S.; Pal, S. A Blockchain and Machine Learning based IoT Framework to Improve Contract Farming. In Proceedings of the 2021 IEEE Globecom Workshops (GC Wkshps), Madrid, Spain, 7–11 December 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Materne, N.; Inoue, M. Potential of IoT System and Cloud Services for Predicting Agricultural Pests and Diseases. In Proceedings of the 2018 IEEE Region Ten Symposium (Tensymp), Sydney, NSW, Australia, 4–6 July 2018; pp. 298–299. [Google Scholar] [CrossRef]
- Sobreiro, L.; Branco, S.; Cabral, J.; Moura, L. Intelligent Insect Monitoring System (I2MS): Using Internet of Things Technologies and Cloud Based Services for early detection of Pests of Field Crops. In Proceedings of the IECON 2019—45th Annual Conference of the IEEE Industrial Electronics Society, Lisbon, Portugal, 14–17 October 2019; Volume 1, pp. 3080–3084. [Google Scholar] [CrossRef]
- Varghese, R.; Sharma, S. Affordable Smart Farming Using IoT and Machine Learning. In Proceedings of the 2018 Second International Conference on Intelligent Computing and Control Systems (ICICCS), Madurai, India, 14–15 June 2018; pp. 645–650. [Google Scholar] [CrossRef]
- Anand, G.; Vyas, M.; Yadav, R.N.; Nayak, S.K. On Reducing Data Transmissions in Fog-Enabled LoRa-Based Smart Agriculture. IEEE Internet Things J. 2024, 11, 8894–8905. [Google Scholar] [CrossRef]
- Facina, A.R.; Jiménez Jiménez, L.P.; Facina, M.S.P.; Fraidenraich, G.; De Lima, E.R. LoRaWAN Cattle Tracking Prototype With AI-based Coverage Prediction. In Proceedings of the 2022 IEEE 8th World Forum on Internet of Things (WF-IoT), Yokohama, Japan, 26 October–11 November 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Akhter, F.; Siddiquei, H.R.; Alahi, M.E.E.; Jayasundera, K.P.; Mukhopadhyay, S.C. An IoT-Enabled Portable Water Quality Monitoring System With MWCNT/PDMS Multifunctional Sensor for Agricultural Applications. IEEE Internet Things J. 2022, 9, 14307–14316. [Google Scholar] [CrossRef]
- Kartheepan, T.; Sirigajan, B.; Subangan, K.; Mohammed Azzam, M.A.; Bandara, P.; Hansika, M.M.M.D.J.T. E-Agrigo. In Proceedings of the 2021 3rd International Conference on Advancements in Computing (ICAC), Colombo, Sri Lanka, 9–11 December 2021; pp. 187–192. [Google Scholar] [CrossRef]
- Morales-García, J.; Bueno-Crespo, A.; Martínez-España, R.; García, F.J.; Ros, S.; Fernández-Pedauyé, J.; Cecilia, J.M. SEPARATE: A tightly coupled, seamless IoT infrastructure for deploying AI algorithms in smart agriculture environments. Internet Things 2023, 22, 100734. [Google Scholar] [CrossRef]
- Netthikumarage, D.; Liyanage, L.; Samarakoon, S.; Ramkumar, P.; Harshanath, S.; Rajapaksha, U. GARDENPRO—Android Mobile Application for Home Garden Management Using Machine Learning Augmented Reality and IOT. In Proceedings of the 2022 IEEE 10th Region 10 Humanitarian Technology Conference (R10-HTC), Hyderabad, India, 16–18 September 2022; pp. 300–305. [Google Scholar] [CrossRef]
- Anh Khoa, T.; Quang Minh, N.; Hai Son, H.; Nguyen Dang Khoa, C.; Ngoc Tan, D.; VanDung, N.; Hoang Nam, N.; Ngoc Minh Duc, D.; Trung Tin, N. Wireless sensor networks and machine learning meet climate change prediction. Int. J. Commun. Syst. 2021, 34, e4687. [Google Scholar] [CrossRef]
- Patel, R.S.; Amin, D.D.; Patel, S.; Rahevar, M.; Patel, C.; Nayak, A. Smart Crop Protection Against Animal Encroachment using Deep Learning. In Proceedings of the 2023 4th International Conference on Intelligent Engineering and Management (ICIEM), London, UK, 9–11 May 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Ashik Mabrook, K.; Dhannia, T.; Santosh Kumar, B. Hydroponic Intelligent Portable System(HIPS). In Proceedings of the 2022 IEEE 19th India Council International Conference (INDICON); Kochi, India, 24–26 November 2022, pp. 1–4. [CrossRef]
- Joshi, P.; Das, D.; Udutalapally, V.; Misra, S.C. FarmEdge: A Unified Edge Computing Framework Enabling Digital Agriculture. In Proceedings of the 2021 IEEE International Symposium on Smart Electronic Systems (iSES), Jaipur, India, 18–22 December 2021; pp. 255–260. [Google Scholar] [CrossRef]
- Vignesh, L.; Nishanth, J.C.; Prasad Hari, H.R.; Jayanth Kumar, A.; Pomu Chavan, C. Smart Farm Android Application Using IoT and Machine Learning. In Proceedings of the 2023 IEEE 8th International Conference for Convergence in Technology (I2CT), Lonavla, India, 7–9 April 2023; pp. 1–4. [Google Scholar] [CrossRef]
- Saad, M.M.; Khan, M.T.R.; Tariq, M.A.; Kim, D. LSTM Enabled Artificial Intelligent Smart Gardening System. In Proceedings of the International Conference on Research in Adaptive and Convergent Systems, New York, NY, USA, 13–16 October 2020; RACS’20; pp. 136–141. [Google Scholar] [CrossRef]
- Siam, M.K.H.; Tasnia, N.; Mahmud, S.; Halder, M.; Rana, M.M. A Next-Generation Device for Crop Yield Prediction Using IoT and Machine Learning. In Intelligent Systems and Networks; Nguyen, T.D.L., Verdú, E., Le, A.N., Ganzha, M., Eds.; Springer: Singapore, 2023; pp. 668–678. [Google Scholar] [CrossRef]
- Dayalini, S.; Sathana, M.; Navodya, P.R.; Weerakkodi, R.W.A.I.M.N.; Jayakody, A.; Gamage, N. Agro-Mate: A Virtual Assister to Maximize Crop Yield in Agriculture Sector. In Proceedings of the TENCON 2021—2021 IEEE Region 10 Conference (TENCON), Colombo, Sri Lanka, 7–10 December 2021; pp. 387–392. [Google Scholar] [CrossRef]
- Lutz, E.; Coradi, P.C. Equilibrium Moisture Content and Dioxide Carbon Monitoring in Real-Time to Predict the Quality of Corn Grain Stored in Silo Bags using Artificial Neural Networks. Food Anal. Methods 2023, 16, 1079–1098. [Google Scholar] [CrossRef]
- Jossa-Bastidas, O.; Sanchez, A.O.; Bravo-Lamas, L.; Garcia-Zapirain, B. IoT System for Gluten Prediction in Flour Samples Using NIRS Technology, Deep and Machine Learning Techniques. Electronics 2023, 12, 1916. [Google Scholar] [CrossRef]
- Nguyen, N.; Nguyen, K.; Dinh, N.; Tran, N. Machine learning for the assessment and prediction of nitrite in the aquaculture water. In Proceedings of the 2022 International Conference on Multimedia Analysis and Pattern Recognition (MAPR), Phu Quoc, Vietnam, 13–14 October 2022; pp. 1–5. [Google Scholar] [CrossRef]
- Casella, E.; Cantor, M.C.; Setser, M.M.W.; Silvestri, S.; Costa, J.H.C. A Machine Learning and Optimization Framework for the Early Diagnosis of Bovine Respiratory Disease. IEEE Access 2023, 11, 71164–71179. [Google Scholar] [CrossRef]
- Devi, D.; Anand, A.; Sophia, S.; Karpagam, M.; Maheswari, S. IoT- Deep Learning based Prediction of Amount of Pesticides and Diseases in Fruits. In Proceedings of the 2020 International Conference on Smart Electronics and Communication (ICOSEC), Trichy, India, 10–12 September 2020; pp. 848–853. [Google Scholar] [CrossRef]
- Sebti, M.R.; Carabetta, S.; Russo, M.; Merenda, M. Ochratoxin A Growth Probability Estimation in Wine Production Using AI-Powered IoT Devices. In Proceedings of the 2023 IEEE Conference on AgriFood Electronics (CAFE), Torino, Italy, 25–27 September 2023; pp. 152–156. [Google Scholar] [CrossRef]
- Khoo, J.; Haw, S.; Su, N.; Mulaafer, S. Kiwi Fruit IoT Shelf Life Estimation During Transportation with Cloud Computing. In Proceedings of the 2021 IEEE International Conference on Artificial Intelligence in Engineering and Technology (IICAIET), Kota Kinabalu, Malaysia, 13–15 September 2021; pp. 1–5. [Google Scholar] [CrossRef]
- Segalla, A.; Fiacco, G.; Tramarin, L.; Nardello, M.; Brunelli, D. Neural networks for Pest Detection in Precision Agriculture. In Proceedings of the 2020 IEEE International Workshop on Metrology for Agriculture and Forestry (MetroAgriFor), Trento, Italy, 4–6 November 2020; pp. 7–12. [Google Scholar] [CrossRef]
- Riskiawan, H.; Gupta, N.; Setyohadi, D.; Anwar, S.; Kurniasari, A.; Hariono, B.; Firmansyah, M.; Yogiswara, Y.; Mansur, A.; Basori, A. Artificial Intelligence Enabled Smart Monitoring and Controlling of IoT-Green House. Arab. J. Sci. Eng. 2023, 49, 3043–3061. [Google Scholar] [CrossRef]
- Shobana, G.; Sudheksha, S.; Vinothini, K. Fruit Freshness Detecting System Using Deep Learning and Raspberry PI. In Proceedings of the 2022 International Conference on Innovative Computing, Intelligent Communication and Smart Electrical Systems (ICSES), Chennai, India, 15–16 July 2022; pp. 1–7. [Google Scholar] [CrossRef]
- Chen, W.E.; Lin, Y.B.; Chen, L.X. PigTalk: An AI-Based IoT Platform for Piglet Crushing Mitigation. IEEE Trans. Ind. Inform. 2021, 17, 4345–4355. [Google Scholar] [CrossRef]
- Xie, J.; Liang, G.; Gao, P.; Wang, W.; Yin, D.; Li, J. Research on site selection of agricultural internet of things nodes based on rapid terrain sampling. Comput. Electron. Agric. 2023, 204, 107493. [Google Scholar] [CrossRef]
- Jain, P.; Choudhury, S.B.; Bhatt, P.; Sarangi, S.; Pappula, S. Maximising Value of Frugal Soil Moisture Sensors for Precision Agriculture Applications. In Proceedings of the 2020 IEEE/ITU International Conference on Artificial Intelligence for Good (AI4G), Geneva, Switzerland, 21–25 September 2020; pp. 63–70. [Google Scholar] [CrossRef]
- Zhang, T.; Hai, T.; Lu, J.; Zhao, X.; Shangguan, Y.; Deng, Z. Design of aquaculture grid system based on Solor energy and Internet of Things. In Proceedings of the 2023 International Conference on Smart Electrical Grid and Renewable Energy (SEGRE), Changsha, China, 16–19 June 2023; pp. 181–187. [Google Scholar] [CrossRef]
- Xie, S.; Wang, C.; Wang, C.; Lin, Y.; Dong, X. Online Identification Method of Tea Diseases in Complex Natural Environments. IEEE Open J. Comput. Soc. 2023, 4, 62–71. [Google Scholar] [CrossRef]
- Sharma, A.; Kumar, H.; Mittal, K.; Kauhsal, S.; Kaushal, M.; Gupta, D.; Narula, A. IoT and deep learning-inspired multi-model framework for monitoring Active Fire Locations in Agricultural Activities. Comput. Electr. Eng. 2021, 93, 107216. [Google Scholar] [CrossRef]
- Duan, S.; Yang, W.; Wang, X.; Mao, S.; Zhang, Y. Temperature Forecasting for Stored Grain: A Deep Spatiotemporal Attention Approach. IEEE Internet Things J. 2021, 8, 17147–17160. [Google Scholar] [CrossRef]
- Abdellah, N.A.A.; Thangadurai, N. Real Time Application of IoT for the Agriculture in the Field along with Machine Learning Algorithm. In Proceedings of the 2020 International Conference on Computer, Control, Electrical, and Electronics Engineering (ICCCEEE), Khartoum, Sudan, 26 February–1 March 2021; pp. 1–6. [Google Scholar] [CrossRef]
- Raje, S.; Erapu, V.; Venkanna, U.; Das, D. eGWQI: Edge Intelligence Based Ground Water Quality Monitoring System for Smart Irrigation. In Proceedings of the 2022 IEEE International Symposium on Smart Electronic Systems (iSES), Warangal, India, 18–22 December 2022; pp. 568–573. [Google Scholar] [CrossRef]
- Liu, H.; Yang, Y.; Wan, X.; Cui, J.; Zhang, F.; Cai, T. Prediction of soil moisture and temperature based on deep learning. In Proceedings of the 2021 IEEE International Conference on Artificial Intelligence and Computer Applications (ICAICA), Dalian, China, 28–30 June 2021; pp. 46–51. [Google Scholar] [CrossRef]
- Taneja, M.; Byabazaire, J.; Jalodia, N.; Davy, A.; Olariu, C.; Malone, P. Machine learning based fog computing assisted data-driven approach for early lameness detection in dairy cattle. Comput. Electron. Agric. 2020, 171, 105286. [Google Scholar] [CrossRef]
- Blessy, A.; Kumar, A.; Johri, P. Banana Irrigation System and Scheduling based on Reinforcement Learning. Int. J. Eng. Trends Technol. 2022, 70, 394–400. [Google Scholar] [CrossRef]
- Alrowais, F.; Asiri, M.M.; Alabdan, R.; Marzouk, R.; Hilal, A.M.; Alkhayyat, A.; Gupta, D. Hybrid leader based optimization with deep learning driven weed detection on internet of things enabled smart agriculture environment. Comput. Electr. Eng. 2022, 104, 108411. [Google Scholar] [CrossRef]
- Sweetwilliams, F.; Matthews, V.; Adetiba, E.; Babalola, D.; Akande, V. Detection of Sigatoka Disease in Plantain Using IoT and Machine Learning Techniques. J. Phys. Conf. Ser. 2019, 1378, 022004. [Google Scholar] [CrossRef]
- Balaceanu, C.; Streche, R.; Roscaneanu, R.; Osiac, F.; Orza, O.; Bosoc, S.; Suciu, G. Diseases Detection System based on Machine Learning Algorithms and Internet of Things Technology used in Viticulture. In Proceedings of the 2022 E-Health and Bioengineering Conference (EHB), Iasi, Romania, 17–18 November 2022; pp. 1–4. [Google Scholar] [CrossRef]
- Elsherbiny, O.; Zhou, L.; He, Y.; Qiu, Z. A novel hybrid deep network for diagnosing water status in wheat crop using IoT-based multimodal data. Comput. Electron. Agric. 2022, 203, 107453. [Google Scholar] [CrossRef]
- Sharma, A.; Kumar Singh, P. Applicability of UAVs in detecting and monitoring burning residue of paddy crops with IoT Integration: A step towards greener environment. Comput. Ind. Eng. 2023, 184, 109524. [Google Scholar] [CrossRef]
- Heo, S.; Baumann, N.; Margelisch, C.; Giordano, M.; Magno, M. Low-cost Smart Raven Deterrent System with Tiny Machine Learning for Smart Agriculture. In Proceedings of the 2023 IEEE International Instrumentation and Measurement Technology Conference (I2MTC), Kuala Lumpur, Malaysia, 22–25 May 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Francis Selvaraj Jayapalan, D.; Ananth, J.P. Root disease classification with hybrid optimization models in IoT. Expert Syst. Appl. 2023, 226, 120150. [Google Scholar] [CrossRef]
- Tsoukas, V.; Gkogkidis, A.; Kakarountas, A. A TinyML-based System For Smart Agriculture. In Proceedings of the 26th Pan-Hellenic Conference on Informatics, New York, NY, USA, 25–27 November 2022; PCI’22. pp. 207–212. [Google Scholar] [CrossRef]
- Dar, U.; Anisi, M.H.; Abolghasemi, V.; Newenham, C.; Ivanov, A. Visual sensor network based early onset disease detection for strawberry plants. In Proceedings of the 2023 IEEE Applied Sensing Conference (APSCON), Bengaluru, India, 23–25 January 2023; pp. 1–3. [Google Scholar] [CrossRef]
- Rustia, D.J.A.; Lee, W.C.; Lu, C.Y.; Wu, Y.F.; Shih, P.Y.; Chen, S.K.; Chung, J.Y.; Lin, T.T. Edge-based wireless imaging system for continuous monitoring of insect pests in a remote outdoor mango orchard. Comput. Electron. Agric. 2023, 211, 108019. [Google Scholar] [CrossRef]
- Junagade, S.; Choudhury, S.B.; Sarangi, S.; Pappula, S. Estimation of Plucking Points with Overhead Imaging in Tea—A Case Study. In Proceedings of the 2022 IEEE Region 10 Symposium (TENSYMP), Mumbai, India, 1–3 July 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Fatyanosa, T.N.; Firdausanti, N.A.; Soto, L.F.J.; dos Santos, I.M.; Prayoga, P.H.N.; Aritsugi, M. Conducting Vessel Data Imputation Method Selection Based on Dataset Characteristics. IOP Conf. Ser. Earth Environ. Sci. 2023, 1198, 012017. [Google Scholar] [CrossRef]
- Wee, B.S.; Chin, C.S.; Sharma, A. Artificial Intelligence of Things Enabled Fungiculture in Shipping Container. In Proceedings of the 2022 IEEE/ACIS 24th International Winter Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing, SNPD 2022, Taichung, Taiwan, 7–9 December 2022; pp. 115–119. [Google Scholar] [CrossRef]
- Torres, A.B.; da Rocha, A.R.; Coelho da Silva, T.L.; de Souza, J.N.; Gondim, R.S. Multilevel data fusion for the internet of things in smart agriculture. Comput. Electron. Agric. 2020, 171, 105309. [Google Scholar] [CrossRef]
- Akhter, R.; Sofi, S.A. Precision agriculture using IoT data analytics and machine learning. J. King Saud Univ.-Comput. Inf. Sci. 2022, 34, 5602–5618. [Google Scholar] [CrossRef]
- Zhang, M.; Feng, H.; Tomka, J.; Polovka, M.; Ma, R.; Zhang, X. Predicting of mutton sheep stress coupled with multi-environment sensing and supervised learning network in the transportation process. Comput. Electron. Agric. 2021, 190, 106422. [Google Scholar] [CrossRef]
- Grassi, S.; Marti, A.; Cascella, D.; Casalino, S.; Cascella, G.L. Electric drive supervisor for milling process 4.0 automation: A process analytical approach with IIoT NIR devices for common wheat. Sensors 2020, 20, 1147. [Google Scholar] [CrossRef]
- Dutta, D.; Natta, D.; Mandal, S.; Ghosh, N. MOOnitor: An IoT based multi-sensory intelligent device for cattle activity monitoring. Sens. Actuators A Phys. 2022, 333, 113271. [Google Scholar] [CrossRef]
- Sitharthan, R.; Rajesh, M.; Vimal, S.; Saravana Kumar, E.; Yuvaraj, S.; Kumar, A.; Jacob Raglend, I.; Vengatesan, K. A novel autonomous irrigation system for smart agriculture using AI and 6G enabled IoT network. Microprocess. Microsyst. 2023, 101, 104905. [Google Scholar] [CrossRef]
- Kobayashi, T.; Tanaka, Y.; Fukae, K.; Imai, T.; Arai, K. Aqua Colony for Fully Automated Aquaculture. In Proceedings of the 2023 11th IEEE International Conference on Mobile Cloud Computing, Services, and Engineering (MobileCloud), Athens, Greece, 17–20 July 2023; pp. 11–16. [Google Scholar] [CrossRef]
- Vidhya, M.; Samb, D.; Vidhya, A. RBD-AIIoT: Rice Blasts Detection Combining AI & IoT. In Proceedings of the 2022 International Conference on Knowledge Engineering and Communication Systems (ICKES), Chickballapur, India, 28–29 December 2022; pp. 1–5. [Google Scholar] [CrossRef]
- Attari, S.; Dhatingan, O.; Gupta, A.; Alshi, A.; Bais, Y. Smart AgrIOT: A Machine learning and IOT based complete farming solution. In Proceedings of the 2022 IEEE 19th India Council International Conference (INDICON), Kochi, India, 24–26 November 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Chang, C.L.; Chung, S.C.; Fu, W.L.; Huang, C.C. Artificial intelligence approaches to predict growth, harvest day, and quality of lettuce (Lactuca sativa L.) in a IoT-enabled greenhouse system. Biosyst. Eng. 2021, 212, 77–105. [Google Scholar] [CrossRef]
- Silva, M.C.; da Silva, J.C.F.; Delabrida, S.; Bianchi, A.G.C.; Ribeiro, S.P.; Silva, J.S.; Oliveira, R.A.R. Wearable edge ai applications for ecological environments. Sensors 2021, 21, 5082. [Google Scholar] [CrossRef]
- Arya, P.S.; Gangwar, M. A Proposed Architecture: Detecting Freshness of Vegetables using Internet of Things (IoT) & Deep Learning Prediction Algorithm. In Proceedings of the 2021 3rd International Conference on Advances in Computing, Communication Control and Networking (ICAC3N), Greater Noida, India, 17–18 December 2021; pp. 718–723. [Google Scholar] [CrossRef]
- Kontogiannis, S.; Asiminidis, C. A Proposed Low-Cost Viticulture Stress Framework for Table Grape Varieties. IoT 2020, 1, 337–359. [Google Scholar] [CrossRef]
- Jung, S.H.; Kim, J.Y.; Park, J.; Huh, J.H.; Sim, C.B. A Study on Acer Mono Sap Integration Management System Based on Energy Harvesting Electric Device and Sap Big Data Analysis Model. Electronics 2020, 9, 1979. [Google Scholar] [CrossRef]
- Lucas Pascual, A.; Madueño Luna, A.; de Jódar Lázaro, M.; Molina Martínez, J.M.; Ruiz Canales, A.; Madueño Luna, J.M.; Justicia Segovia, M. Analysis of the Functionality of the Feed Chain in Olive Pitting, Slicing and Stuffing Machines by IoT, Computer Vision and Neural Network Diagnosis. Sensors 2020, 20, 1541. [Google Scholar] [CrossRef]
- Tsakiridis, N.L.; Diamantopoulos, T.; Symeonidis, A.L.; Theocharis, J.B.; Iossifides, A.; Chatzimisios, P.; Pratos, G.; Kouvas, D. Versatile Internet of Things for Agriculture: An eXplainable AI Approach. In Artificial Intelligence Applications and Innovations; Maglogiannis, I., Iliadis, L., Pimenidis, E., Eds.; Springer: Cham, Switzerland, 2020; pp. 180–191. [Google Scholar] [CrossRef]
- Ma, W.; Fan, J.; Zhao, C.; Wu, H. The Realization of Pig Intelligent Feeding Equipment and Network Service Platform. In Computer and Computing Technologies in Agriculture XI; Li, D., Zhao, C., Eds.; Springer: Cham, Switzerland, 2019; pp. 473–484. [Google Scholar] [CrossRef]
- A, H.P.; Senthilmurugan, M.; K, P.R.; Chinnaiyan, R. IoT and Machine Learning based Peer to Peer Platform for Crop Growth and Disease Monitoring System using Blockchain. In Proceedings of the 2021 International Conference on Computer Communication and Informatics (ICCCI), Coimbatore, India, 27–29 January 2021; pp. 1–5. [Google Scholar] [CrossRef]
- Winkler, D.A.; Cerpa, A.E. WISDOM: Watering intelligently at scale with distributed optimization and modeling. In Proceedings of the 17th Conference on Embedded Networked Sensor Systems, New York, NY, USA, 10–13 November 2019; SenSys’19. pp. 219–231. [Google Scholar] [CrossRef]
- Morales-Badajoz, A.M.; Elieh, N.; Diederich, A.; Sadler, E.; Glover, J.; Nizampatnam, M.; Israel, T.; Wang, A.; Zhang, L.; Besnilian, A. Astro Cultivators: Autonomous Growth System for Space Farming based on Machine Vision and Multi-Sensor Fusion. In Proceedings of the Cyber-Physical Systems and Internet of Things Week 2023, New York, NY, USA, 9–12 May 2023; CPS-IoT Week’23. pp. 385–390. [Google Scholar] [CrossRef]
- Raju, R.; Thasleema, T.M. An IoT Solutions for Ungulates Attacks in Farmland. In Proceedings of the 2023 2nd International Conference for Innovation in Technology (INOCON), Bangalore, India, 3–5 March 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Jacob, P.M.; Moni, J.; Varghese, R.R.; Akhila Sreenivas, K.; Saleema, D.; Ayswarya, K. An Integrated Framework for Crop Cultivation using Internet of Things and Computational Intelligence. In Proceedings of the 2022 International Conference on Data Analytics for Business and Industry (ICDABI), Sakhir, Bahrain, 25–26 October 2022; pp. 56–61. [Google Scholar] [CrossRef]
- Siddika, A.; Hossen Faysal, M.A.; Rasel Ahmed, M.; Rahaman, M.M.; Ali, M.; Ahmed Foysal, M.F. A Data Analysis Technique to Find the Environmental Effect on Egg Production in the Poultry Farm Using ML and IOT. In Proceedings of the 2022 IEEE 8th International Conference on Computing, Engineering and Design (ICCED), Sukabumi, Indonesia, 28–29 July 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Chung, I.; Gupta, A.; Ogunfunmi, T. Remote Crop Disease Detection Using Deep Learning with IoT. In Proceedings of the 2022 IEEE Global Humanitarian Technology Conference (GHTC), Santa Clara, CA, USA, 8–11 September 2022; pp. 353–360. [Google Scholar] [CrossRef]
- Lin, J.Y.; Lin, Y.B.; Chen, W.L.; Ng, F.L.; Yeh, J.H.; Lin, Y.W. IoT-Based Bacillus Number Prediction in Smart Turmeric Farms Using Small Data Sets. IEEE Internet Things J. 2023, 10, 5146–5157. [Google Scholar] [CrossRef]
- Palniladevi, P.; Sabapathi, T.; Kanth, D.A.; Kumar, B.P. IoT Based Smart Agriculture Monitoring System Using Renewable Energy Sources. In Proceedings of the 2023 2nd International Conference on Vision Towards Emerging Trends in Communication and Networking Technologies (ViTECoN), Vellore, India, 5–6 May 2023; pp. 1–6. [Google Scholar] [CrossRef]
- Shah, K.A.; Sri, M.U.; Goud, B.V.; Mannem, K. Two-Fold Spoiled Onion Detection using Soft Computing and IoT. In Proceedings of the 2023 International Conference on Inventive Computation Technologies (ICICT), Lalitpur, Nepal, 26–28 April 2023; pp. 1357–1360. [Google Scholar] [CrossRef]
- Rosero-Montalvo, P.D.; Gordillo-Gordillo, C.A.; Hernandez, W. Smart Farming Robot for Detecting Environmental Conditions in a Greenhouse. IEEE Access 2023, 11, 57843–57853. [Google Scholar] [CrossRef]
- Tholhappiyan, T.; Sankar, S.; Selvakumar, V.; Robert, P. Agriculture Monitoring System with Efficient Resource Management using IoT. In Proceedings of the 2023 Second International Conference on Augmented Intelligence and Sustainable Systems (ICAISS), Trichy, India, 23–25 August 2023; pp. 1628–1633. [Google Scholar] [CrossRef]
- Malarvizhi, P.; Dayana, R.; Srivathsan, D.; Keerthi Varman, S.; Shashank, V. Integrated Smart Farming Technique Using IOT and AI-ML. In Proceedings of the 2022 International Interdisciplinary Humanitarian Conference for Sustainability (IIHC), Bengaluru, India, 18–19 November 2022; pp. 1444–1446. [Google Scholar] [CrossRef]
- Papanikolaou, V.K.; Tegos, S.A.; Bouzinis, P.S.; Tyrovolas, D.; Diamantoulakis, P.D.; Karagiannidis, G.K. ATLAS: Internet of Things Platform for Precision Aquaculture. In Proceedings of the 2022 Panhellenic Conference on Electronics & Telecommunications (PACET), Tripolis, Greece, 2–3 December 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Aunindita, R.F.; Shiam Misbah, M.; Bin Joy, S.; Rahman, M.A.; Mahabub, S.I.; Noor Mukta, J. Use of Machine Learning and IoT for Monitoring and Tracking of Livestock. In Proceedings of the 2022 25th International Conference on Computer and Information Technology (ICCIT), Cox’s Bazar, Bangladesh, 17–19 December 2022; pp. 815–820. [Google Scholar] [CrossRef]
- Mohagheghi, A.; Moallem, M. An Energy-Efficient PAR-Based Horticultural Lighting System for Greenhouse Cultivation of Lettuce. IEEE Access 2023, 11, 8834–8844. [Google Scholar] [CrossRef]
- Viviane, I.; Emmanuel, M.; Rene, M.; Joseph, H.; Elias, B. Development of AI-Based Maize Storage Monitoring System Using IoT. In Proceedings of the 2023 International Conference on Intelligent Computing and Control (IC&C), Wuhan, China, 24–26 February 2023; pp. 38–42. [Google Scholar] [CrossRef]
- Hu, Z.; Bashir, R.N.; Rehman, A.U.; Iqbal, S.I.; Shahid, M.M.A.; Xu, T. Machine Learning Based Prediction of Reference Evapotranspiration (ET0) Using IoT. IEEE Access 2022, 10, 70526–70540. [Google Scholar] [CrossRef]
- Li, Y.; Du, B.; Luo, L.; Luo, Y.; Yang, X.; Liu, Y.; Shu, L. A Scheme for Pest-Dense Area Localization With Solar Insecticidal Lamps Internet of Things Under Asymmetric Links. IEEE Trans. Agrifood Electron. 2023, 1, 71–85. [Google Scholar] [CrossRef]
- Reddy, B.A.; Krishna, G.S.; Saraswathi, K.P.; Sadhvika, I.; Udutalapally, V.; Das, D. dScout: Unmanned Ground Vehicle for Automatic Disease Detection and Pesticide Atomizer. In Proceedings of the 2022 IEEE 7th International conference for Convergence in Technology (I2CT), Mumbai, India, 7–9 April 2022; pp. 1–6. [Google Scholar] [CrossRef]
- Alexander, D.; Hathnapitiya, G.; Gamage, A.I.; Bandara, P.; Giragama, G.; Ravi Supunya Swamakantha, N. Supervising Plant Growth in a Greenhouse. In Proceedings of the 2022 22nd International Conference on Advances in ICT for Emerging Regions (ICTer), Colombo, Sri Lanka, 30 November–1 December 2022; pp. 154–159. [Google Scholar] [CrossRef]
- Murakami, R.; Yamamoto, H. Growth Estimation Sensor Network System for Aquaponics using Multiple Types of Depth Cameras. In Proceedings of the 2022 International Conference on Artificial Intelligence in Information and Communication (ICAIIC), Jeju Island, Republic of Korea, 21–24 February 2022; pp. 33–38. [Google Scholar] [CrossRef]
- Singh, M.; Sahoo, K.S.; Nayyar, A. Sustainable IoT Solution for Freshwater Aquaculture Management. IEEE Sens. J. 2022, 22, 16563–16572. [Google Scholar] [CrossRef]
- Hossam, M.; Kamal, M.; Moawad, M.; Maher, M.; Salah, M.; Abady, Y.; Hesham, A.; Khattab, A. PLANTAE: An IoT-Based Predictive Platform for Precision Agriculture. In Proceedings of the 2018 International Japan-Africa Conference on Electronics, Communications and Computations (JAC-ECC), Alexandria, Egypt, 17–19 December 2018; pp. 87–90. [Google Scholar] [CrossRef]
- Ahmad, I.; Shariffudin, S.E.; Ramli, A.F.; Maharum, S.M.M.; Mansor, Z.; Kadir, K.A. Intelligent Plant Monitoring System Via IoT and Fuzzy System. In Proceedings of the 2021 IEEE 7th International Conference on Smart Instrumentation, Measurement and Applications (ICSIMA), Bandung, Indonesia, 23–25 August 2021; pp. 123–127. [Google Scholar] [CrossRef]
- Nóbrega, L.; Tavares, A.; Cardoso, A.; Gonçalves, P. Animal monitoring based on IoT technologies. In Proceedings of the 2018 IoT Vertical and Topical Summit on Agriculture—Tuscany (IOT Tuscany), Tuscany, Italy, 8–9 May 2018; pp. 1–5. [Google Scholar] [CrossRef]
- Jacob, P.M.; Suresh, S.; John, J.M.; Nath, P.; Nandakumar, P.; Simon, S. An Intelligent Agricultural Field Monitoring and Management System using Internet of Things and Machine Learning. In Proceedings of the 2020 International Conference on Data Analytics for Business and Industry: Way Towards a Sustainable Economy (ICDABI), Sakheer, Bahrain, 26–27 October 2020; pp. 1–5. [Google Scholar] [CrossRef]
- Tianxing, X.; Hong, G. Design of Agricultural Environmental Data Collection System Based on Internet of Things. In Proceedings of the 2021 IEEE International Conference on Power, Intelligent Computing and Systems (ICPICS), Shenyang, China, 29–31 July 2021; pp. 150–152. [Google Scholar] [CrossRef]
- Illandara, T.; De Silva, H.; Madurawala, K.; Dayasena, B.; Srimath, U.; Samaratunge Arachchillage, S.; Buddhika, T. Smart Intelligent Advisory Agent for Farming Community. In Proceedings of the 2020 2nd International Conference on Advancements in Computing (ICAC), Malabe, Sri Lanka, 10–11 December 2020; Volume 1, pp. 392–397. [Google Scholar] [CrossRef]
- Adami, D.; Ojo, M.O.; Giordano, S. Design, Development and Evaluation of an Intelligent Animal Repelling System for Crop Protection Based on Embedded Edge-AI. IEEE Access 2021, 9, 132125–132139. [Google Scholar] [CrossRef]
- Chang, K.C.; Guo, Z.W. The Monkeys are Coming—Design of Agricultural Damage Warning System by IoT-Based Objects Detection and Tracking. In Proceedings of the 2018 IEEE International Conference on Consumer Electronics-Taiwan (ICCE-TW), Taichung, Taiwan, 19–21 May 2018; pp. 1–2. [Google Scholar] [CrossRef]
- Mariyam, S.J.; Meghamala, M.; Meghashree, M. Automatized Food Quality Detection and Processing System Using Neural Networks. In Proceedings of the 2019 4th International Conference on Recent Trends on Electronics, Information, Communication & Technology (RTEICT), Bangalore, India, 17–18 May 2019; pp. 1442–1446. [Google Scholar] [CrossRef]
- Banda-Chávez, J.M.; Serrano-Rubio, J.P.; Manjarrez-Carrillo, A.O.; Rodriguez-Vidal, L.M.; Herrera-Guzman, R. Intelligent Wireless Sensor Network for Ornamental Plant Care. In Proceedings of the IECON 2018—44th Annual Conference of the IEEE Industrial Electronics Society, Washington, DC, USA, 21–23 October 2018; pp. 2723–2728. [Google Scholar] [CrossRef]
- Mehra, M.; Saxena, S.; Sankaranarayanan, S.; Tom, R.J.; Veeramanikandan, M. IoT based hydroponics system using Deep Neural Networks. Comput. Electron. Agric. 2018, 155, 473–486. [Google Scholar] [CrossRef]
Paper | Complimentarity Investigated | Systematic Review |
---|---|---|
Qazi et al. (2022) [58] | No | No |
Pathan et al. (2020) [59] | No | No |
Singh et al. (2021) [60] | No | No |
Tonado et al. (2022) [61] | Yes | No |
Swamidason et al. (2022) [62] | Yes | No |
Alahmad et al. (2022) [63] | Yes | No |
Keru Patil et al. (2022) [64] | Yes | No |
Baghel et al. (2022) [66] | Yes | No |
Gupta et al. (2022) [65] | Yes | No |
Hegedus et al. (2023) [67] | Yes | No |
This work | Yes | Yes |
Criteria | |
---|---|
1. | Manuscripts not written in English are excluded. |
2. | Books, review studies, and surveys are excluded. |
3. | Studies not related to or about agriculture are excluded. |
Inclusion Criteria | Justification | |
---|---|---|
1. | Studies that utilize IoT hardware/infrastructure for agricultural data collection, monitoring, or control, and deploy an AI algorithm are included. | To ensure conceptual or propositional works without actual IoT and AI/ML implementations are not included. |
2. | Primary research studies on precision agriculture using IoT with AI are included. | To ensure relevance to the research objectives, prioritizing empirical evidence, and the review’s scope. |
Ref. | Research Questions |
---|---|
SQ1. | In which databases are the studies published? |
SQ2. | What is the number of publications per year? |
SQ3. | What are the types (journal or conference) of publications of the studies? |
SQ4. | In which countries are the institutions from which the studies were published? |
GQ1. | Which forms of agriculture are referred to in the studies? |
GQ2. | Which IoT components are referred to in the studies? |
GQ3. | Which agricultural challenges are addressed in the studies? |
GQ4. | What kinds of data are collected or used in the studies? |
GQ5. | Which AI/ML algorithms are used in the studies? |
FQ1. | What IoT strengths and weaknesses affect AI/ML positively or negatively in the studies? |
FQ2. | What AI/ML strengths and weaknesses affect IoT positively or negatively in the studies? |
Paper | Terminology | Definition |
---|---|---|
[72,73,74] | Machine Learning (ML) | ML is the scientific technique wherein computers autonomously learn and improve by processing data from real-world interactions. It involves adaptive mechanisms, enabling learning from examples and experiences, showcasing technology’s ability to automate analytical model construction within. |
[75,76,77] | Artificial Neural Network (ANN) | ANN is a class of neural networks designed for systematic tractability and characterized by their mathematical analyzability. These statistical learning algorithms take inspiration from biological neural networks and find applications in diverse tasks, spanning from straightforward classification to advanced functions like speech recognition and computer vision. |
[78,79,80,81] | K-Nearest Neighbor (KNN) | KNN is a non-parametric supervised learning algorithm. It represents each sample by its K-nearest neighbors, utilizing distance metrics like Euclidean or Manhattan. The algorithm predicts the output based on the most comparable sets, determined by the nearest specified k-value, in a feature space. |
[78,79,82] | Decision Tree Classifier | DTC is a non-parametric, supervised learning algorithm for classification and regression. It utilizes a hierarchical tree structure, where nodes represent features, decision nodes denote logic for data division, and leaf nodes indicate outcomes. It aids decision-making by creating paths leading to class labels or regression values, predicting outcomes by traversing nodes based on feature metrics, as seen in agriculture for crop selection. |
[76,78,80,82,83] | Random Forest Classifier (RFC) | The RFC is a supervised learning technique, which enhances decision tree classifier performance through ensemble learning. It combines multiple decision trees independently built using bootstrap resampling, ensuring dataset independence for each tree. Employing a majority vote mechanism, the algorithm delivers robust classification, improving accuracy and generalizability, and mitigating overfitting. |
[79,81,83,84,85] | Support Vector Machine (SVM) | SVM is a supervised machine learning algorithm. It employs a hyperplane to separate classes, with the kernel function transforming data. SVM maps data into a higher-dimensional space, finding a hyperplane that maximizes the separation between data points. The algorithm involves dividing data into training and validation sets, aiming to identify support vectors and margins for effective classification. |
[75,76] | Support Vector Regression (SVR) | SVR is a machine learning technique tailored for predicting continuous values by identifying a hyperplane that minimizes the margin between predicted and actual values, accommodating some error. The hyperplane is a linear function of input features that minimizes the distance between itself and predicted values. |
[78,86] | XGBoost (XGB) | XGBoost, an ensemble algorithm, employs gradient-boosting decision trees to sequentially train individual trees, each correcting the errors of the previous one. The model aggregates their classifications for a final prediction. It enhances the traditional gradient-boosted decision trees with improvements in loss function, regularization, and column sampling, optimizing predictions through a gradient descent algorithm. |
[87] | Ensemble | Ensemble learning constitutes a machine learning paradigm wherein multiple learners undergo training to collectively address a shared problem. Predominantly employed in supervised learning contexts, numerous scholarly investigations affirm that ensemble learning yields superior predictive performance compared to the individual learning algorithms comprising it. |
Paper | Terminology | Definition |
---|---|---|
[72,73,88,89,90,91] | Internet of Things (IoT) | IoT refers to a vast network of interconnected physical devices that collect and exchange data using various protocols. Characterized as any entity capable of sensing and affecting the physical environment, IoT incorporates sensors and actuators with unique identification, enabling ubiquitous information sharing and control. In practical terms, IoT involves the integration of components, such as sensors and smart devices, which facilitate remote management in a wide range of applications, from agriculture to weather monitoring. |
[92] | Message Queuing Telemetry Transport (MQTT) | A reliable messaging standard for IoT, MQTT ensures the delivery of messages to intended recipients, even in unreliable network connections. It facilitates bidirectional communication between clients and servers. |
[92] | Hypertext Transfer Protocol (HTTP) | HTTP is a standardized protocol for web communication enabling interaction between user devices, including smartphones, tablets, or personal computers, allowing access to APIs and facilitating real-time data transfer. |
[93] | Arduino IDE | An open-source platform for developing IoT projects, Arduino offers a wide range of libraries and tutorials, making it accessible for beginners to initiate IoT projects. |
[86] | Radio Frequency Identification (RFID) | RFID is a contactless technology that automates the identification of objects, animals, and individuals through a transponder, commonly referred to as a tag. Particularly relevant in perishable food supply chain traceability systems, this technology employs tags to store data. RFID readers subsequently capture tag data, facilitating its transfer to backend databases, allowing remote access for monitoring object parameters. |
[94,95] | Smart farming | Smart Farming constitutes a network of devices equipped with sensors and actuators, such as temperature, humidity, and soil moisture sensors, and motors and variable-rate sprayers. These devices collectively generate time-series data, which are subsequently transmitted to a remote application. The application optimizes agricultural processes by analyzing and utilizing the reported data. |
[80,96] | LoRaWAN | LoRaWAN provides a long-range communication system with low power consumption. This technology employs chirp spread spectrum modulation, which involves a sinusoidal signal with linear variation across a specified bandwidth, producing a chirp. The advantages of this modulation technique include prolonged battery life and extended-range transmission, albeit at the cost of a reduced data rate. |
[80] | Arduino UNO | The Arduino UNO is an open-source microcontroller board based on the Microchip Atmeg 328P microcontroller and developed by Arduino.cc. This board features a range of digital and analog input/output pins that can be interfaced with various expansion boards and circuits. |
[97] | ESP32 | ESP32 is a series of low-cost, low-power microcontrollers with Wi-Fi and Bluetooth capabilities and a highly integrated structure, powered by a dual-core Tensilica Xtensa LX6 microprocessor. |
[98] | Raspberry Pi | Raspberry Pi 4B is an open development platform with strong processor performance and supports for edge computing. Additionally, it supports high-level language programming, which can reduce development costs. |
Paper | Terminology | Definition |
---|---|---|
[73,83,99,100,101,102,103,104] | Precision Agriculture | Precision agriculture (PA) employs advanced data technology for optimal crop production. It involves precise crop identification, performance monitoring, machinery use, and variable application of fertilizers, herbicides, and insecticides. PA is a science and tech-driven farm management approach enhancing crop production efficiency. |
[94,105] | Greenhouse | A greenhouse is a controlled environment facilitating enhanced and year-round crop yields. Its enclosed structure protects plants from adverse weather, allowing cultivation of various crops, including exotic species. This indoor farm, constructed with transparent materials, maintains a monitored micro-climate, ensuring optimal conditions for plant growth while preventing insect attacks and agricultural damage, thereby reducing human–animal conflicts. |
[99,106] | Irrigation | Irrigation is the artificial method of distributing water to farm fields to facilitate the cultivation and growth of crops. |
[107,108] | Aquaculture | Aquaculture is the comprehensive practice involving the cultivation and nurturing of aquatic organisms, including fish, crabs, plants, and algae. It encompasses a range of activities, knowledge, and methodologies for the breeding and cultivation of aquatic plants and various animal species. |
[91,109,110] | Hydroponics | Hydroponics is a soil-less cultivation method where plants thrive in a nutrient-rich water solution, allowing for agricultural practices in regions with inadequate soil conditions. |
[111,112] | Aquaponics | Aquaponics is an integrated food production technique combining aquaculture (cultivating aquatic animals in a designated water tank) and hydroponics (cultivating soil-less plants with water). In this system, nutrient-rich water, containing bacteria for waste conversion, is supplied to hydroponic plants. Aquaculture involves breeding aquatic plants and animals through diverse methodologies and techniques. |
[113] | Relative Humidity | Relative humidity is the proportion of moisture in the air compared to its saturation capacity at a specific temperature. This occurs as water exists in the atmosphere as imperceptible water vapor, commonly referred to as humidity. |
[114] | Climate | Climate refers to the prolonged average of weather conditions. It encompasses various meteorological factors including temperature, humidity, rainfall, sunlight duration, air pressure, and wind. |
[80,115,116] | Soil Fertility | Soil fertility denotes the concentration of essential nutrients crucial for plant growth within the soil. The growth of plants is intricately tied to the soil fertility status. |
Components | |
---|---|
Microcontroller Board | Arduino Uno, Arduino Portenta H7, Raspberry Pi, Raspberry Pi Zero W, Raspberry Pi 3, Raspberry Pi 4, ATmega328p, ARM Cortex-M4, STM32F103-ARM, ATSAMD51, ATmega16, NodeMCU, ATMega328pb, ATmega1281, Wio Terminal |
Single-chip Computer | ESP32, ESP8266, NVIDIA Jetson Nano, NVIDIA Jetson AGX Orin, Jetson Nano, ASUS Mini PC PB60G |
GPU/TPU | NVIDIA GeForce (RTX 2060 SUPER, RTX 2080, GTX 1070), NVIDIA K80, NVIDIA Titan, Google Coral Edge TPU |
Computer | Personal Computer, Server, High-Performance Computing Server, Industrial PC, Host Computer |
Cloud Service | Firebase, Amazon Web Services (SageMaker), Heroku, Google Cloud Platform, Google Colab, Google Sheets, MATLAB ThingSpeak, Azure IoT, Alibaba Cloud, Blynk, Dropbox, Cenote platform, Adafruit IO |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Senoo, E.E.K.; Anggraini, L.; Kumi, J.A.; Karolina, L.B.; Akansah, E.; Sulyman, H.A.; Mendonça, I.; Aritsugi, M. IoT Solutions with Artificial Intelligence Technologies for Precision Agriculture: Definitions, Applications, Challenges, and Opportunities. Electronics 2024, 13, 1894. https://doi.org/10.3390/electronics13101894
Senoo EEK, Anggraini L, Kumi JA, Karolina LB, Akansah E, Sulyman HA, Mendonça I, Aritsugi M. IoT Solutions with Artificial Intelligence Technologies for Precision Agriculture: Definitions, Applications, Challenges, and Opportunities. Electronics. 2024; 13(10):1894. https://doi.org/10.3390/electronics13101894
Chicago/Turabian StyleSenoo, Elisha Elikem Kofi, Lia Anggraini, Jacqueline Asor Kumi, Luna Bunga Karolina, Ebenezer Akansah, Hafeez Ayo Sulyman, Israel Mendonça, and Masayoshi Aritsugi. 2024. "IoT Solutions with Artificial Intelligence Technologies for Precision Agriculture: Definitions, Applications, Challenges, and Opportunities" Electronics 13, no. 10: 1894. https://doi.org/10.3390/electronics13101894