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Deep long short-term memory networks-based automatic recognition of six different digital modulation types under varying noise conditions

机译:深度短期内记忆网络的自动识别在不同的噪声条件下的六种不同的数字调制类型

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摘要

In this paper, a new method based on deep learning has been proposed in order to recognize noise-digital modulation signals at varying noise levels automatically. The 8-bit data from six different modulations have been obtained by adding noise levels from 5 to 25dB. The used digital modulation types are Amplitude Shift Keying, Frequency Shift Keying, Phase Shift Keying, Quadrature Amplitude Shift Keying, Quadrature Frequency Shift Keying, and Quadrature Phase Shift Keying. To recognize the noise-digital modulation signals automatically, a new deep long short-term memory networks (LSTMs) model has been proposed and then applied to these signals successfully. A significant advantage of the proposed system is that deep learning method has been trained and tested with raw digital modulation signals without applying any feature extraction from the signals. In this study, the noise modulation signals of 5-25dB have been classified and compared with each other. The innovative aspect of the study is to classify the modulation with the LSTM method without dealing with the extraction of signal characteristics. Without noise, added digital modulation signals had been classified as the success rate of 97.22%, while with all noise-added signals have been classified as the success rate of 94.72% with deep LSTM model. The experimental results show that the proposed deep LSTM model has been achieved remarkable results in recognition of noised six different modulation signals with a fully end-to-end structure.
机译:在本文中,提出了一种基于深度学习的新方法,以便自动地识别不同噪声水平的噪声数字调制信号。通过从5到25dB添加噪声水平来获得来自六种不同调制的8位数据。使用的数字调制类型是幅度移位键控,频移键控,相移键控,正交幅度移位键控,正交频移键控和正交相移键控。为了自动识别噪声数字调制信号,已经提出了一种新的深度短期内存网络(LSTMS)模型,然后成功应用于这些信号。所提出的系统的一个显着优点是,深度学习方法已经过培训并用原始数字调制信号进行了测试,而无需从信号中施加任何特征提取。在这项研究中,5-25dB的噪声调制信号已被分类并彼此进行比较。该研究的创新方面是通过LSTM方法对调制进行分类,而无需处理信号特性的提取。没有噪声,添加数字调制信号已被归类为97.22%的成功率,而所有感应的信号都被归类为具有深入LSTM模型的94.72%的成功率。实验结果表明,所提出的深层LSTM模型已经实现了显着的导致识别出现出现的六种不同调制信号,具有完全端到端的结构。

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