Design and Implementation of Opportunity Signal Perception Unit Based on Time-Frequency Representation and Convolutional Neural Network
Abstract
:1. Introduction
- Coherent detection [6]:
2. Signal and System
2.1. Signal Introduction
- Bluetooth [21]
- WiFi [22]
- ZigBee [23]
2.2. System Structure
- Perception controller
- Signal acquisition
- Time-frequency joint representation
- Preprocessing
- Signal classification
- Model manager
3. Time–Frequency Representation
3.1. Short-Time Fourier Transform
3.2. Continuous Wavelet Transform
3.3. Wigner-Ville Distribution
3.4. Cohen Classes
3.5. Effect Analysis
4. CNN-Based Signal Classification Model
4.1. CNN Structure Design
4.2. Data Collection
4.3. Model Training
4.4. Training Result
5. Experiments and Performance Evaluation
5.1. Perception Experiment
5.1.1. Experimental System
5.1.2. Experimental Scenarios
5.1.3. Experimental Result
5.2. Energy Efficiency Evaluation
6. Conclusions
- Introduce noise suppression methods to solve the perception failure when the target signal power is at the same level of noise, and improve the sensitivity of perception;
- Select USRP equipment with better performance to realize wider bandwidth SOP perception;
- Combine the perception unit proposed with SOP positioning system to carry out positioning experiments.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Signal | Frequency | Bandwidth |
---|---|---|
WiFi | 2.4 GHz/5 GHz | 20 MHz/40 MHz/80 MHz |
Bluetooth | 2.4 GHz | 1 MHz |
ZigBee | 2.4 GHz | 2 MHz |
DVB-T | 40–200 MHz | 8 MHz |
GMS | 900, 1800 MHz | 200 kHz |
Iridium | 1620 MHz | 41.67 kHz |
Learning Rate | Batch Size | Training Iteration Number | |
---|---|---|---|
Negative learning 1 | 0.000002 | 30 | 10 |
Positive learning | 0.0003 | 30 | 30 |
Negative learning 2 | 0.00001 | 30 | 15 |
Learning Rate | Batch Size | Training Iteration Number | |
---|---|---|---|
Negative learning 1 | 0.000002 | 30 | 10 |
Positive learning | 0.0003 | 30 | 30 |
Negative learning 2 | 0.00001 | 30 | 15 |
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Deng, Z.; Qi, H.; Liu, Y.; Hu, E. Design and Implementation of Opportunity Signal Perception Unit Based on Time-Frequency Representation and Convolutional Neural Network. Sensors 2021, 21, 7871. https://doi.org/10.3390/s21237871
Deng Z, Qi H, Liu Y, Hu E. Design and Implementation of Opportunity Signal Perception Unit Based on Time-Frequency Representation and Convolutional Neural Network. Sensors. 2021; 21(23):7871. https://doi.org/10.3390/s21237871
Chicago/Turabian StyleDeng, Zhongliang, Hang Qi, Yanxu Liu, and Enwen Hu. 2021. "Design and Implementation of Opportunity Signal Perception Unit Based on Time-Frequency Representation and Convolutional Neural Network" Sensors 21, no. 23: 7871. https://doi.org/10.3390/s21237871
APA StyleDeng, Z., Qi, H., Liu, Y., & Hu, E. (2021). Design and Implementation of Opportunity Signal Perception Unit Based on Time-Frequency Representation and Convolutional Neural Network. Sensors, 21(23), 7871. https://doi.org/10.3390/s21237871