
Journal of Systems Engineering and Electronics ›› 2026, Vol. 37 ›› Issue (1): 137-147.doi: 10.23919/JSEE.2025.000155
• DEFENCE ELECTRONICS TECHNOLOGY • Previous Articles Next Articles
Yongsheng DUAN(
), Junning ZHANG(
), Lei XUE(
), Ying XU(
)
Received:2025-05-15
Accepted:2025-09-11
Online:2026-02-18
Published:2026-03-09
Contact:
Junning ZHANG
E-mail:406810103@qq.com;zjn20101796@sina.cn;eeixuelei@163.com;eeixuying@163.com
About author:Supported by:Yongsheng DUAN, Junning ZHANG, Lei XUE, Ying XU. Embedded RF fingerprint interpretation: multi-channel complex residual networks with adaptive sphere space decision boundaries[J]. Journal of Systems Engineering and Electronics, 2026, 37(1): 137-147.
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Table 1
Performance comparison of various models on multiple datasets"
| Algorithm | Dataset 1 | Dataset 2 | Number of parameters | Single-epoch time/s | Number of training epoch | Total time/s | |||
| Training accuracy/% | Validation accuracy/% | Training accuracy/% | Validation accuracy/% | ||||||
| ResNet [ | 96.02 | 82.67 | 75.48 | 52.50 | 485 406 | 15.11 | 33 | 498.33 | |
| CVCNN- ResNet [ | 95.32 | 83.08 | 86.56 | 84.28 | 6 852 817 | 57.365 | 16 | 917.84 | |
| CPC-ResNet | 97.35 | 82.77 | 91.32 | 86.67 | 3 951 283 | 52.285 | 15 | 784.275 | |
| MCPC-ResNet [ | 97.64 | 83.41 | 93.21 | 91.43 | 9 087 283 | 70.588 | 6 | 453.528 | |
| The proposed method | 99.91 | 98.68 | 99.62 | 98.21 | 14 093 495 | 114.706 | 5 | 573.53 | |
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| [1] | Yurui ZHAO, Xiang WANG, Liting SUN, Zhitao HUANG. Specific emitter identification based on frequency and amplitude of the signal kurtosis [J]. Journal of Systems Engineering and Electronics, 2025, 36(2): 333-343. |
| [2] | Rong FAN, Chengke SI, Yi HAN, Qun WAN. RFFsNet-SEI: a multidimensional balanced-RFFs deep neural network framework for specific emitter identification [J]. Journal of Systems Engineering and Electronics, 2024, 35(3): 558-574. |
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