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小波奇异值分解的瞬变弱信号检测
引用本文:徐彦凯,双 凯.小波奇异值分解的瞬变弱信号检测[J].中国石油大学学报(自然科学版),2014(3):181-185.
作者姓名:徐彦凯  双 凯
作者单位:中国石油大学地球物理与信息工程学院;
基金项目:国家自然科学基金面上项目(61072074);中国石油大学(北京)基金项目(KYJJ2012-05-35)
摘    要:研究小波阈值法和奇异值分解法,分析最大分解层数、阈值函数、小波基函数的选取以及窗长和保留奇异值个数等参数的选择,并在此基础上提出小波与奇异值分解相结合降噪检测信号的方法。该方法首先将信号作小波分解,再对小波分解系数作奇异值分解,最后通过阈值法保留小波系数并重建降噪信号,利用重建信号进行信号检测。结果表明:该方法能更好地区分信号和噪声,获得更好的降噪和检测结果。

关 键 词:小波阈值法  奇异值分解  瞬变信号  信号检测
收稿时间:2013/10/5 0:00:00

Detection of transient weak signal based on wavelet transform and singular value decomposition
XU Yan-kai and SHUANG Kai.Detection of transient weak signal based on wavelet transform and singular value decomposition[J].Journal of China University of Petroleum,2014(3):181-185.
Authors:XU Yan-kai and SHUANG Kai
Institution:XU Yan-kai;SHUANG Kai;College of Geophysics and Information Engineering in China University of Petroleum;
Abstract:The wavelet-threshold method and the singular value decomposition (SVD) were introduced for detection of transient weak signal. Detailed aspects in the methods were discussed, including how to select the maximum decomposition level, threshold function, wavelet basis function, window length and the effective singular value number. A new detecting method integrating the wavelet method and the singular value decomposition was put forward. In the method, the transient weak signal is decomposed by db2wavelet, and then the wavelet coefficients which are de-noised by singular value decomposition are used to reconstruct the signal. Simulation results demonstrate that the proposed method is efficient in distinguishing the transient weak signal from noise. By comparison, the proposed method outperforms the wavelet-threshold method and SVD.
Keywords:wavelet-threshold method  singular value decomposition  transient signal  signal detection
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