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Feature Extraction Method of Transmission Signal in Electronic Communication Network Based on Symmetric Algorithm

机译:基于对称算法的电子通信网络传输信号特征提取方法

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摘要

Because the existing methods extract the signal characteristics of electronic communication networks, there is a problem of poor extraction. In this paper, a feature extraction method based on symmetric algorithm for transmission signals in electronic communication networks is proposed. The transmission signal in the time domain is decomposed by three-layer wavelet packet decomposition through threshold denoising and data dimension reduction. The adaptive floating threshold is used as a threshold to quantify the wavelet coefficients of the signal, which can effectively remove noise while retaining valuable transmission signal. Secondly, the feature extraction algorithm based on symmetric Holder coefficient is used to transform the transmitted signal from time domain to frequency domain, identify the signal sequence, and classify the signal sequence using neural network classifier. The simulation results show that the proposed method can extract the transmission signal of electronic communication network with the highest accuracy of 98.21%. This method can extract the amplitude and frequency characteristics of the transmission signal accurately under strong vibration environment. It is an efficient method for feature extraction of transmission signal.
机译:因为现有方法提取电子通信网络的信号特性,所以提取差的问题。本文提出了一种基于电子通信网络中的传输信号对称算法的特征提取方法。时域中的传输信号通过阈值去噪和数据尺寸减小来分解三层小波分组分解。自适应浮动阈值用作量化信号的小波系数的阈值,这可以有效地除去噪声,同时保持有价值的传输信号。其次,基于对称保持器系数的特征提取算法用于将发送的信号从时域转换为频域,识别信号序列,并使用神经网络分类器对信号序列进行分类。仿真结果表明,该方法可以提取电子通信网络的最高精度为98.21%的传输信号。该方法可以在强振动环境下精确地提取传输信号的幅度和频率特性。它是传输信号的特征提取的有效方法。

著录项

  • 作者

    Dingyu Song;

  • 作者单位
  • 年度 2019
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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