Near Ground Pathloss Propagation Model Using Adaptive Neuro Fuzzy Inference System for Wireless Sensor Network Communication in Forest, Jungle and Open Dirt Road Environments
Abstract
:1. Introduction
- Build the WSN node for the measurement experiment (LoRa radio transceiver).
- Measure the radio signal strength at jungle, forest, and open dirt road environments.
- Input those measurements into the designed ANFIS engine as the data training input.
- Build a new semi deterministic pathloss propagation model that is more accurate for jungle, forest, and open dirt road environments.
- Validate the model using RMSE and MAE against benchmark models.
2. Models, Materials, and Methods
2.1. Related Pathloss Propagation Models
2.1.1. Okumura-Hata Model
- = Pathloss propagation model created by Okumura Hata.
- = Frequency carrier in MHz.
- ht = Antenna transmitter height in meters.hr = Antenna receiver height in meters.
- = Distance between transmitter and receiver in Km.
2.1.2. Optimized FITU-R Model for Near Ground Forest (Optimized FITU-R NGF) Model
- = Pathloss propagation using FITU-R model.
- = Frequency carrier in GHz.
- ht = Antenna transmitter height in meters.
- hr = Antenna receiver height in meters.= Distance between transmitter and receiver in meters.
- A, B, C = Least squared error fit from measured data, which is 0.48, 0.43, 0.13.
2.1.3. ITU-R Maximum Attenuation and Free Space Pathloss (ITU-R MA FSPL) Model
- = Maximum excess attenuation in dB; in Salameh result was 38.
- R = R is the initial slope of the attenuation curve; in Salameh result was 0.9 db/m.
- = Distance between transmitter and receiver in Km.
- = Frequency carrier in MHz.
2.2. Measurement Equipment
2.3. Measurement Environment
2.4. Adaptive Neuro Fuzzy Inference System Method
- i = every node in Fuzzy ANFIS architecture.
- x = is the input to node i.
- A, B = is the linguistic label (such as small, large, etc.).
- = is the parameter set.
- = is the firing strength of node.
- = is the normalized firing strength of node.
- = is the parameter set.
- = is error measure which is the sum of squared errors.
- = is m component from P output target vector.
- = is m component from actual output vector that has been produced by P input vector.
- S = shows the set of nodes whose output depends on α.
- η = is a learning rate.
- k = is the step size of length of each gradient transition in the parametric space.
- = Input variable such as frequency, bandwidth, spreading factor, range, and others.
- a = Defines the width of the membership function input.
- = Defines the shape of the curve on either side of the midland.
- = Defines the center point of the membership function.
- = Constant Output Level generated automatically by ANFIS.
3. Results and Discussion
- Obstacle loss due to the vegetation environment that obstructed the signal. As stated by Salameh, “direct ray is the major contributor to the received signal by the receiver which is located near the ground of the forest. The implication here is that the ground reflected ray in this environment is negligible, since the forest ground is covered with shrubs that can absorb the wave” [37].
- Obstacle loss due to the Fresnel zone that was caused by low antenna height. Because our measurement was placed with an antenna height of less than 30 cm, this Fresnel zone acted as an obstacle according to Adi and Kitagawa. They stated that the Fresnel zone area is influenced by antenna height: the higher the value of the antenna height, the greater the percentage of the Fresnel zone clearance [55]. They further state that the lower frequency causes a bigger Fresnel zone; thus, it is no wonder that the measurement on 433 MHz generated a lower RSSI signal compared to 868 MHz and 920 MHz.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Parameter | Value |
---|---|
Frequency | 433, 868, 920 MHz |
Bandwidth | 125, 250, 500 KHz |
Spreading Factor | 7–12 |
Antenna Gain | 0 dBi |
Tx-power | 20 dbm |
Measurement Parameter | RSSI |
Measurement | Propagation Model | ||||
---|---|---|---|---|---|
Environment | Frequency | Okumura-Hata | Optimized FITU-R NG | ITU-R MA FSPL | Fuzzy ANFIS |
Forest | 433 MHz | 12.28 | 8.57 | 15.49 | 1.30 |
868 MHz | 6.32 | 4.08 | 9.58 | 1.46 | |
920 MHz | 6.67 | 4.55 | 15.79 | 1.23 | |
Jungle | 433 MHz | 11.97 | 8.18 | 15.28 | 1.11 |
868 MHz | 6.45 | 4.16 | 9.82 | 1.91 | |
920 MHz | 7.20 | 5.03 | 16.35 | 1.06 | |
Open Dirt Road | 433 MHz | 22.77 | 10.56 | 22.29 | 0.88 |
868 MHz | 16.22 | 5.99 | 15.49 | 0.98 | |
920 MHz | 17.48 | 7.40 | 16.72 | 1.66 |
Measurement | Propagation Model | ||||
---|---|---|---|---|---|
Environment | Frequency | Okumura Hata | Optimized FITU-R NG | ITU-R MA FSPL | Fuzzy ANFIS |
Forest | 433 MHz | 51.44 | 36.11 | 65.02 | 3.05 |
868 MHz | 26.12 | 16.89 | 39.94 | 3.80 | |
920 MHz | 28.20 | 19.45 | 42.02 | 3.30 | |
Jungle | 433 MHz | 50.98 | 30.98 | 60.31 | 3.35 |
868 MHz | 29.16 | 15.00 | 38.48 | 5.13 | |
920 MHz | 32.59 | 18.90 | 41.89 | 3.10 | |
Open Dirt Road | 433 MHz | 46.48 | 24.54 | 57.86 | 1.61 |
868 MHz | 40.80 | 14.84 | 42.33 | 2.31 | |
920 MHz | 43.63 | 18.07 | 45.07 | 4.05 |
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Hakim, G.P.N.; Habaebi, M.H.; Toha, S.F.; Islam, M.R.; Yusoff, S.H.B.; Adesta, E.Y.T.; Anzum, R. Near Ground Pathloss Propagation Model Using Adaptive Neuro Fuzzy Inference System for Wireless Sensor Network Communication in Forest, Jungle and Open Dirt Road Environments. Sensors 2022, 22, 3267. https://doi.org/10.3390/s22093267
Hakim GPN, Habaebi MH, Toha SF, Islam MR, Yusoff SHB, Adesta EYT, Anzum R. Near Ground Pathloss Propagation Model Using Adaptive Neuro Fuzzy Inference System for Wireless Sensor Network Communication in Forest, Jungle and Open Dirt Road Environments. Sensors. 2022; 22(9):3267. https://doi.org/10.3390/s22093267
Chicago/Turabian StyleHakim, Galang P. N., Mohamed Hadi Habaebi, Siti Fauziah Toha, Mohamed Rafiqul Islam, Siti Hajar Binti Yusoff, Erry Yulian Triblas Adesta, and Rabeya Anzum. 2022. "Near Ground Pathloss Propagation Model Using Adaptive Neuro Fuzzy Inference System for Wireless Sensor Network Communication in Forest, Jungle and Open Dirt Road Environments" Sensors 22, no. 9: 3267. https://doi.org/10.3390/s22093267