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Research on MPSK Modulation Classification of Underwater Acoustic Communication Signals

机译:水下声学通信信号MPSK调制分类研究

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On account of the complex underwater acoustic channel with severe attenuation, multipath effect, Doppler effect, as well as time and frequency spread characteristics, the task of inferring modulation of the underwater acoustic communication signals is extremely difficult and challenging. In this paper, we propose an automatic modulation recognition (AMR) scheme in order to recognize the MPSK signals from a variety of underwater acoustic communication (UAC) signals, considering the Gaussian white noise and multipath channels. The scheme deals with two parts: firstly, the feature extraction of UAC signals and the design of classifier. In the aspect of the feature extraction, a PSK modulation type is inferred using the amplitude of the variance for signals transformed by wavelet. This is necessary because the wavelet transformation of MFSK and QAM is a multi-step function and their variance amplitude of the wavelet transformation is greater than zero due to the performance of a multi-stage process. However, the wavelet transform of MPSK is zero. Secondly, the M value of PSK signals is confirmed by the feature parameter exploiting the four-order cumulant. This is necessary a more than two order cumulant can restrain Gaussian noise and has a good ability to adapt to signal to noise ratio (SNR). According to the proposed methods, the feature parameters with significant difference are obtained as the input of the classifier. Subsequently, the support vector machine (SVM) was employed as classifier for both inter-class and inner-class recognition. Both the train data and the test data to SVM were acquired by simulation, and we simulated the recognition rates of inter-class recognition and inner-class recognition respectively over the different training set, and we can anticipate that increasing the training data set improves the classifier performance. The experimental results show that the proposed scheme achieved the obvious effect of recognizing MPSK modulation signals remarkably and had an excellent recognition rate.
机译:由于具有严重衰减,多径效应,多普勒效应以及时间和频率扩展特性的复杂水下声学通道,推断水下声学通信信号的任务是极其困难和具有挑战性的。在本文中,我们提出了一种自动调制识别(AMR)方案,以便考虑高斯白噪声和多径信道来识别来自各种水下声学通信(UAC)信号的MPSK信号。该方案涉及两部分:首先,UAC信号的特征提取和分类器的设计。在特征提取的方面,使用由小波变换的信号的幅度的幅度推断PSK调制类型。这是必要的,因为MFSK和QAM的小波变换是由于多级过程的性能,它们的小波变换的差异幅度大于零。但是,MPSK的小波变换为零。其次,通过利用四阶累积剂的特征参数来确认PSK信号的M值。这是必须抑制高斯噪声的两个以上的累积累积累积,并且具有适应信噪比(SNR)的良好能力。根据所提出的方法,获得具有显着差异的特征参数作为分类器的输入。随后,支持向量机(SVM)作为阶级和内部识别的分类器。通过模拟获取列车数据和测试数据到SVM,并且我们分别在不同训练集中模拟了类别识别和内部级别识别的识别率,我们可以预测增加培训数据集的提高分类器性能。实验结果表明,该方案达到了显着识别MPSK调制信号的明显效果,具有出色的识别率。

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