A Residual Neural Network for Modulation Recognition of 24 kinds of Signals

Xinjie Tan, Zhidong Xie, Xinwang Yuan, Gang Yang, Yung-Su Han
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引用次数: 1

Abstract

With the development of wireless communication technology and the updates of communication equipment, the modulation of signal becomes more complex, and modulation recognition is becoming more and more difficult. Traditional signal modulation recognition methods rely on human experience, its feature extraction process is complex, and the empirical threshold is difficult to find. The recognition method combined with manual feature extraction and deep neural network can achieve better recognition accuracy, but it is still limited by the process of feature extraction. Compared with the above, automatic modulation recognition method based on deep learning is more efficient in complicated open environment. In this paper, a residual neural network for automatic modulation recognition was designed, and the experiment had achieved remarkable results. When SNR is 10dB, we got an accuracy of 95.3% faced to 24 kinds of signals, and when SNR is 12dB, we got an accuracy of 96.3%. Compared with existing models, this model reduces the network parameters, greatly shortens the training time, and lower the hardware requirements. This model shows a good result on the recognition of high-level modulation signal. When SNR is 10dB, the recognition accuracy of 128APSK, 128QAM and 256QAM is 97%, 88% and 88%.
基于残差神经网络的24种信号调制识别
随着无线通信技术的发展和通信设备的更新,信号的调制变得越来越复杂,调制识别也变得越来越困难。传统的信号调制识别方法依赖于人的经验,其特征提取过程复杂,经验阈值难以找到。人工特征提取与深度神经网络相结合的识别方法可以达到较好的识别精度,但仍然受到特征提取过程的限制。与上述方法相比,基于深度学习的自动调制识别方法在复杂的开放环境下效率更高。本文设计了一种残差神经网络用于自动调制识别,实验取得了显著的效果。当信噪比为10dB时,我们对24种信号的准确率达到95.3%,当信噪比为12dB时,我们对24种信号的准确率达到96.3%。与现有模型相比,该模型减少了网络参数,大大缩短了训练时间,降低了对硬件的要求。该模型对高电平调制信号的识别效果良好。当信噪比为10dB时,128APSK、128QAM和256QAM的识别准确率分别为97%、88%和88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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