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A Radar Signal Recognition Approach via IIF-Net Deep Learning Models

机译:雷达信号识别方法通过IIF-Net深度学习模型

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In the increasingly complex electromagnetic environment of modern battlefields, how to quickly and accurately identify radar signals is a hotspot in the field of electronic countermeasures. In this paper, USRP N210, USRP-LW N210, and other general software radio peripherals are used to simulate the transmitting and receiving process of radar signals, and a total of 8 radar signals, namely, Barker, Frank, chaotic, P1, P2, P3, P4, and OFDM, are produced. The signal obtains time-frequency images (TFIs) through the Choi–Williams distribution function (CWD). According to the characteristics of the radar signal TFI, a global feature balance extraction module (GFBE) is designed. Then, a new IIF-Net convolutional neural network with fewer network parameters and less computation cost has been proposed. The signal-to-noise ratio (SNR) range is ?10 to 6?dB in the experiments. The experiments show that when the SNR is higher than ?2?dB, the signal recognition rate of IIF-Net is as high as 99.74%, and the signal recognition accuracy is still 92.36% when the SNR is ?10?dB. Compared with other methods, IIF-Net has higher recognition rate and better robustness under low SNR.
机译:在现代战场的越来越复杂的电磁环境中,如何快速准确地识别雷达信号是电子对策领域的热点。在本文中,USRP N210,USRP-LW N210和其他一般软件无线电外围设备用于模拟雷达信号的发送和接收过程,总共8个雷达信号,即巴克,弗兰克,混沌,P1,P2 ,生产P3,P4和OFDM。信号通过Choi-Williams分发功能(CWD)获得时频图像(TFI)。根据雷达信号TFI的特性,设计了全局特征平衡提取模块(GFBE)。然后,提出了一种具有较少网络参数和较少计算成本的新型IIF-Net卷积神经网络。在实验中,信噪比范围(SNR)范围为10至6?DB。该实验表明,当SNR高于ΔdB时,IIF-Net的信号识别率高达99.74%,并且当SNR为10Ω时,信号识别精度仍为92.36%。与其他方法相比,IIF-Net在低SNR下具有更高的识别率和更好的鲁棒性。

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