LPI Radar Detection Based on Deep Learning Approach with Periodic Autocorrelation Function
Abstract
:1. Introduction
2. Research Background
2.1. LPI Radar Signal
2.2. Signal Detection
3. Proposed Signal Detection Method
3.1. Periodicity Analysis
3.1.1. Autocorrelation Function
3.1.2. Periodic Autocorrelation Function
3.2. Data Preprocessing and Compression
3.3. Signal Detection Neural Network
3.3.1. Long Short-Term Memory
3.3.2. Fully-Connected Network
4. Detection Performance Analysis
4.1. Model Training
4.2. Simulation Results
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Modulation Scheme | (Hz) | (rad) |
---|---|---|
LFM | constant | |
Costas code | constant | |
Barker code | constant | 0 or |
Modulation Scheme | Parameter | Value |
---|---|---|
Sampling frequency | 50 MHz | |
SNR | dB | |
All | Pulse width | s |
Duty cycle | ||
Signal acquisition time | ||
LFM | Center frequency | MHz |
Modulation bandwidth | MHz | |
Fundamental frequency | MHz | |
Costas code | Number of frequency hops | |
Frequency spacing | MHz | |
Center frequency | MHz | |
Barker code | Barker code length | |
Cycles per phase code |
Hyperparameter | Value |
---|---|
Initial learn rate | |
Learning rate reduction | 3% per epoch |
Epochs | 30 |
Mini batch size | 64 |
Input data length | 256 |
Number of hidden units | 32 |
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Park, D.-H.; Jeon, M.-W.; Shin, D.-M.; Kim, H.-N. LPI Radar Detection Based on Deep Learning Approach with Periodic Autocorrelation Function. Sensors 2023, 23, 8564. https://doi.org/10.3390/s23208564
Park D-H, Jeon M-W, Shin D-M, Kim H-N. LPI Radar Detection Based on Deep Learning Approach with Periodic Autocorrelation Function. Sensors. 2023; 23(20):8564. https://doi.org/10.3390/s23208564
Chicago/Turabian StylePark, Do-Hyun, Min-Wook Jeon, Da-Min Shin, and Hyoung-Nam Kim. 2023. "LPI Radar Detection Based on Deep Learning Approach with Periodic Autocorrelation Function" Sensors 23, no. 20: 8564. https://doi.org/10.3390/s23208564
APA StylePark, D.-H., Jeon, M.-W., Shin, D.-M., & Kim, H.-N. (2023). LPI Radar Detection Based on Deep Learning Approach with Periodic Autocorrelation Function. Sensors, 23(20), 8564. https://doi.org/10.3390/s23208564