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Research on modulation identification of digital signals based on deep learning

机译:基于深度学习的数字信号调制识别研究

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Modulation identification shows great significance for any receiver that has little knowledge of the modulation scheme of the received signal. In this paper, we compare the performance of a deep autoencoder network and three shallow algorithms including SVM, Naive Bayes and BP neural network in the field of communication signal modulation recognition. Firstly, cyclic spectrum is used to pre-process the simulation communication signals, which are at various SNR (from −10dB to 10dB). Then, a deep autoencoder network is established to approximate the internal properties from great amount of data. A softmax regression model is used as a classifier to identify the five typical communication signals, which are FSK, PSK, ASK, MSK, QAM. The results for the experiment illustrate the excellent classification performance of the networks. At last, we discuss the comparison of these methods and three traditional shallow machine learning models.
机译:调制识别对于几乎不了解接收信号调制方案的任何接收机都具有重要意义。在本文中,我们在通信信号调制识别领域比较了深层自动编码器网络和三种浅层算法(包括SVM,朴素贝叶斯和BP神经网络)的性能。首先,使用循环频谱对处于各种SNR(-10dB至10dB)的仿真通信信号进行预处理。然后,建立了一个深层的自动编码器网络,以从大量数据中近似内部属性。 softmax回归模型用作分类器,以识别五个典型的通信信号,即FSK,PSK,ASK,MSK,QAM。实验结果说明了网络的出色分类性能。最后,我们讨论了这些方法与三种传统的浅层机器学习模型的比较。

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