Individual Identification of OFDM Signal Radiation Source Based on Depth Adaptive Wavelet Network

Gaohui Liu, Wentao Yu
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Abstract

To solve the problem of information security hidden danger when using consumer electronic products for wireless communication, an individual identification method of OFDM signal radiation source based on a deep adaptive wavelet network is proposed. Firstly, a mathematical model is established to generate different fine features between subcarriers of OFDM signal transmitter. Then, I/Q channel signals are input into the network. In the process of network training, the lifting wavelet transform process is implemented adaptively to generate multiple signal segments with different time-frequency domain resolutions. Finally, multiple OFDM radiation sources are classified and identified by a classifier. The experiment results show that, under the condition of a signal-to-noise ratio of 30dB, the accuracy of end-to-end identification of five OFDM transmitters by using the deep adaptive wavelet network can reach 95.6%, and the anti-noise performance and parameter number of the network are better than the traditional convolutional neural network.
基于深度自适应小波网络的OFDM信号辐射源个体识别
为解决消费电子产品在无线通信中存在的信息安全隐患问题,提出了一种基于深度自适应小波网络的OFDM信号辐射源个体识别方法。首先,建立数学模型,生成OFDM信号发射机子载波之间的不同精细特征;然后,将I/Q通道信号输入到网络中。在网络训练过程中,自适应地实施提升小波变换过程,生成具有不同时频域分辨率的多个信号段。最后,用分类器对多个OFDM辐射源进行分类和识别。实验结果表明,在信噪比为30dB的条件下,采用深度自适应小波网络对5台OFDM发射机端到端识别的准确率可达95.6%,且网络的抗噪性能和参数数量均优于传统卷积神经网络。
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