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Radar Emitter Signal Recognition Based on EMD and Neural Network

机译:基于EMD和神经网络的雷达发射极信号识别

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—Radar emitter signal (RES) recognition is the important content in radar reconnaissance and signal processing. In order to study the problem of RES recognition, and to improve the RES recognition rate of the electronic warfare equipment, the empirical mode decomposition (EMD) theory and wavelet packet (WP) are introduced into RES feature extraction. A new RES recognition method is proposed based on WP, EMD and neural network (NN). It uses wavelet packet to finish decomposition, de-noising and reconstruction of the RES. Then obtain the intrinsic mode function (IMF) through EMD, which can embody the characteristics of the RES. The energy of each IMF are calculated and normalized, which would be regarded as the feature vector. By constructing back propagation neural network (BPNN) classifier and redial basis function neural network (RBFNN) classifier, it realizes the RES recognition finally. Experiment results show that the RES recognition method based on WP, EMD and NN is an effective recognition method, which can achieve satisfying correct recognition rate in a larger signal to noise ratio, and has certain reference value in follow-up in-depth study.
机译:-Radar发射极信号(RES)识别是雷达侦察和信号处理中的重要内容。为了研究RES认识的问题,并提高电子战设备的RES识别率,将经验模式分解(EMD)理论和小波分组(WP)引入RES特征提取。基于WP,EMD和神经网络(NN)提出了一种新的RES识别方法。它使用小波包来完成分解,取消通知和重建RES。然后通过EMD获取内部模式函数(IMF),其可以体现RE的特性。计算和归一化每个IMF的能量,其将被视为特征向量。通过构建后传播神经网络(BPNN)分类器和重拨基功能神经网络(RBFNN)分类器,它最终实现了RES识别。实验结果表明,基于WP,EMD和NN的RES识别方法是一种有效的识别方法,可以实现满足较大信噪比的正确识别率,并且在后续研究中具有一定的参考值。

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