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Automatic determination of digital modulation types with different noises using Convolutional Neural Network based on time-frequency information

机译:基于时频信息,使用卷积神经网络自动确定不同噪声的数字调制类型

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摘要

In this study, a novel digital modulation classification model has been proposed for automatically recognizing six different modulation types including amplitude shift keying (ASK), frequency shift keying (FSK), phase-shift keying (PSK), quadrate amplitude shift keying (QASK), quadrate frequency shift keying (QFSK), and quadrate phase-shift keying (QPSK). The determination of modulation type is significant in military communication, satellite communication systems, and submarine communication. To classify the modulation types, we have proposed a two-stage hybrid method combining short-time Fourier transform (STFT) and convolutional neural network (CNN). In the first stage, as the data source, the time-frequency information from these modulation signals have been extracted with STFT. This information has been obtained as 2D images to feed the input of the CNN deep learning method. In the second stage, the obtained 2D time-frequency information has been given to the input of the CNN algorithm to classify the modulation types. In this work, noises at various SNR values from 0 dB to 25 dB were created and added to the modulated signals. Even in the presence of noise, the proposed hybrid deep learning model achieved excellent results in the noised-modulation signals. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本研究中,提出了一种新型的数字调制分类模型,用于自动识别六种不同的调制类型,包括幅度移位键控(ark),频移键控(FSK),相移键控(PSK),二次幅度移位键控(QASK) ,Quadrate频移键控(QFSK)和Quadrate相移键控(QPSK)。调制类型的测定在军事通信,卫星通信系统和潜艇通信中是显着的。为了对调制类型进行分类,我们提出了一种两级混合方法,组合了短时傅里叶变换(STFT)和卷积神经网络(CNN)。在第一阶段,作为数据源,已经用STFT提取了来自这些调制信号的时频信息。此信息已获得为2D图像以馈送CNN深度学习方法的输入。在第二阶段,已经给出了所获得的2D时间频率信息对CNN算法的输入来分类调制类型。在这项工作中,创建了从0​​ dB到25 dB的各种SNR值的噪声并将其添加到调制信号中。即使在存在噪声的情况下,所提出的混合深度学习模型也实现了出现的声明调制信号的优异结果。 (c)2019年Elsevier B.V.保留所有权利。

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