MLResNet: An Efficient Method for Automatic Modulation Classification Based on Residual Neural Network

Mingqing Xue, Ming Huang, J. Yang, Ji Da Wu
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引用次数: 1

Abstract

In the face of a complex electromagnetic environment, the modulation mode of communication signals is becoming increasingly complicated. Existing modulation mode recognition methods of communication signals cannot accurately and quickly identify the modulation mode of communication signals. In this letter, we propose an efficient architecture for automatic modulation classification (AMC) based on residual neural network (ResNet). We combine the improved residual neural network with long short-term memory network (LSTM) to obtain a new network structure (MLResNet), which solves the problems of gradient disappearance and too many parameters. In the experiments, MLResNet reaches the overall 24-modulation classification rate of 96.60% at 18 dB SNR on the well-known DeepSig dataset.
基于残差神经网络的调制自动分类方法MLResNet
面对复杂的电磁环境,通信信号的调制方式也变得越来越复杂。现有的通信信号调制方式识别方法不能准确、快速地识别通信信号的调制方式。在这篇文章中,我们提出了一种基于残差神经网络(ResNet)的有效的自动调制分类(AMC)架构。我们将改进的残差神经网络与长短期记忆网络(LSTM)相结合,得到了一种新的网络结构(MLResNet),解决了梯度消失和参数过多的问题。在实验中,MLResNet在著名的DeepSig数据集上,在18 dB信噪比下达到了96.60%的24调制分类率。
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