用于联合频谱和四元频谱的 TCSE-ResNet50 混合信号识别算法

Shoubin Wang, Chunhui Hu, Ming Fang, Lei Shen
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引用次数: 0

摘要

目前,深度学习算法在调制类型识别场景中的应用多集中于单一数字调制类型识别,很少涉及数字模拟混合调制类型识别。目前,识别网络中使用的信号特征比较单一,模拟信号不具备循环谱、星座图等共性识别特征,因此现有的组成方法并不适合数模混合信号集的识别。为了解决这些问题,提出了一种结合频谱第四功率谱的 TCSE-ResNet50 混合信号识别算法,通过信号频谱和第四功率谱的结合形成了具有更广泛特征适用性的特征图。根据所提出的 TCSE-ResNet50 网络中包含的关注机制模块,该模型更加关注离散谱线,尽可能减少其他背景区域或随机噪声对信号识别的干扰。同时,结合交叉熵和三重损失函数,利用交叉熵拉大频域表达式相似的各类信号之间的特征距离,利用三重损失函数缩小随机基带符号或随机加性噪声引起的相似信号之间的特征距离,从而完成{FM、AM、2ASK、BPSK、2FSK、16QAM、16APSK}数模混合信号集的识别。当信噪比为-2dB 时,该算法的平均识别率超过 93%,优于单一特征输入和传统卷积网络识别模型。
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TCSE-ResNet50 mixed-signal identification algorithm for joint spectrum and quartic spectrum
At present, the application of deep learning algorithm to the scene of modulation type identification mostly focuses on single digital modulation type identification, and rarely involves the identification of mixed digital and analog modulation types. At present, the signal characteristics used in the identification network are single, and the analog signal does not have the common identification characteristics such as cyclic spectrum and constellation diagram, so the existing composition method is not suitable for the identification of mixed digital-analog signal sets. In order to solve these problems, a TCSE-ResNet50 mixed-signal recognition algorithm combining the fourth power spectrum of frequency spectrum is proposed, and a feature map with wider feature applicability is formed by combining the signal spectrum and the fourth power spectrum. According to the attention mechanism module included in the proposed TCSE-ResNet50 network, the model pays more attention to discrete spectral lines and reduces the interference of other background areas or random noise on signal recognition as much as possible. At the same time, the cross entropy and triplet loss functions are combined, and the cross entropy is used to widen the characteristic distance between different kinds of signals with similar frequency domain expressions, and the triplet is used to narrow the characteristic distance between similar signals caused by random baseband symbols or random additive noise, thus completing the identification of {FM, AM, 2ASK, BPSK, 2FSK, 16QAM, 16APSK} digital-analog mixed signal sets. When the signal-to-noise ratio is -2dB, the average recognition rate of this algorithm is over 93%, which is superior to single feature input and traditional convolutional network recognition model.
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