Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network
Abstract
:1. Introduction
2. System Model
3. Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network
3.1. Residual Connections
3.2. Residual Network Structure
3.3. Multi-Node Cooperative Jamming Recognition Method
4. Simulation Result and Analysis
4.1. Parameter Settings
4.2. Performance Analysis
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Index | Layers | Output Dimension |
---|---|---|
1 | Input | 512 × 1 |
2 | 15 × 1,conv,48 | 512 × 1 |
3 | 7 × 1,conv,64 | 512 × 1 |
4 | 3 × 1,maxpool,/2 | 256 × 1 |
5 | Residual-block1 (64) | 128 × 1 |
6 | Residual-block2 (64) | 128 × 1 |
7 | Residual-block1 (128) | 64 × 1 |
8 | Residual-block2 (128) | 64 × 1 |
9 | Residual-block2 (128) | 64 × 1 |
10 | 32 × 1,average pooling layer | 1 × 256 |
11 | fc × 32 | 1 × 32 |
12 | Softmax, fc × 6 | 1 × 6 |
Training Parameters | Numerical Values |
---|---|
Initial learning rate | 0.001 |
Number of iterative rounds | 6 |
Small batch size | 128 |
Parameter optimizer | Adam |
Learning rate drop period | 9 |
Convolution kernel size Desampling step size | 1 × 1, 3 × 1, 7 × 1, 15 × 1 2 |
Input: sensory information from M co-cognitive nodes Output: global jamming signal classification judgement |
Step 1: (Training phase) The central node trains a neural network “Trainednet” using the perceptual information of the M co-cognitive nodes and distributes the network parameters to each co-cognitive node. |
Step 2: (Testing phase) The M co-cognitive nodes use the trained neural network to perform classification judgments, independently obtain recognition results Hi and send the recognition results back to the central node. |
Step 3: (Data fusion phase) The central node performs data fusion based on the sensory information of each cooperative cognitive node and derives the global recognition result Hw based on the majority judgment criterion, which is used as the final recognition result of the multi-node cooperative jamming recognition network. |
Input: sensory information from M co-cognitive nodes Output: global jamming signal classification judgement |
Step 1: (Training phase) The central node trains a neural network “Trainednet” using the sensory information of the M co-cognitive nodes and distributes the network parameters to each co-cognitive node. |
Step 2: (Testing phase) The M co-cognitive nodes use the trained neural network to perform classification judgments, obtain recognition vectors Vi independently and transmit the recognition results back to the central node. |
Step 3: (Data fusion phase) The central node performs data fusion based on the sensory information of each cooperative cognitive node, all vectors are added to obtain the global judgment vector Vw, and the jamming with the highest probability is used as the global recognition result Hw. |
Jamming Pattern | Jamming Parameters |
---|---|
Single-tone Jamming | The frequency point is randomly located near the carrier frequency fc. |
Multi-tone Jamming | The frequency point is randomly located near the carrier frequency fc. The number of tones is random. |
Narrow-band Jamming | The central frequency is located at fc and the band width is randomly generated. |
Broad-band Jamming | The central frequency is located at fc and the band width is randomly generated. |
Comb Jamming | Initial frequency is random around fc and the number and intervals of frequency points are random. |
Sweep Jamming | Initial frequency is random around fc. |
Net | Average Correct Recognition Rate |
---|---|
ResNet | 88.08% |
CNN (Lenet) | 82.41% |
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Shen, J.; Li, Y.; Zhu, Y.; Wan, L. Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network. Electronics 2022, 11, 3280. https://doi.org/10.3390/electronics11203280
Shen J, Li Y, Zhu Y, Wan L. Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network. Electronics. 2022; 11(20):3280. https://doi.org/10.3390/electronics11203280
Chicago/Turabian StyleShen, Junren, Yusheng Li, Yonggang Zhu, and Liujin Wan. 2022. "Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network" Electronics 11, no. 20: 3280. https://doi.org/10.3390/electronics11203280
APA StyleShen, J., Li, Y., Zhu, Y., & Wan, L. (2022). Cooperative Multi-Node Jamming Recognition Method Based on Deep Residual Network. Electronics, 11(20), 3280. https://doi.org/10.3390/electronics11203280