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SIGNAL FEATURE EXTRACTION BASED UPON INDEPENDENT COMPONENT ANALYSIS AND WAVELET TRANSFORM 被引量:7

SIGNAL FEATURE EXTRACTION BASED UPON INDEPENDENT COMPONENT ANALYSIS AND WAVELET TRANSFORM
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摘要 It is an important precondition for machine fault diagnosis that vibrationsignal can be extracted effectively. Based on the characteristic of noise interfused during thecourse of sampling vibration signal, independent component analysis (ICA) method is combined withwavelet to de-noise. Firstly, The sampled signal can be separated with ICA, then the function offrequency band chosen with multi-resolution wavelet transform can be used to judge whether thestochastic disturbance singular signal is interfused. By these ways, the vibration signals can beextracted effectively, which provides favorable condition for subsequent feature detection ofvibration signal and fault diagnosis. It is an important precondition for machine fault diagnosis that vibrationsignal can be extracted effectively. Based on the characteristic of noise interfused during thecourse of sampling vibration signal, independent component analysis (ICA) method is combined withwavelet to de-noise. Firstly, The sampled signal can be separated with ICA, then the function offrequency band chosen with multi-resolution wavelet transform can be used to judge whether thestochastic disturbance singular signal is interfused. By these ways, the vibration signals can beextracted effectively, which provides favorable condition for subsequent feature detection ofvibration signal and fault diagnosis.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2005年第1期123-126,共4页 中国机械工程学报(英文版)
基金 This project is supported by National Natural Science Foundation of China (No.50275154) Municipal Natural Science Foundation of Chongqing, China (No.8773).
关键词 Independent component analysis (ICA) Wavelet transform DE-NOISING FAULTDIAGNOSIS Feature extraction Independent component analysis (ICA) Wavelet transform De-noising Faultdiagnosis Feature extraction
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参考文献6

  • 1Alexander Y, David M J T, Robert P W D. Robert machine fault detection with independent component analysis and support vector data description.Pattern Recognition Group, Dept. of Applied Physics, Delft University of Technology.
  • 2Gelle G, Colas M, Delaunay G. Blind sources separation applied to rotating machines monitoring by acoustical and vibrations analysis. Mechanical Systems and Signal Processing, 2000, 3(14): 427~442.
  • 3Hyvarinen. A New approximations of differential entropy for independent component analysis and projection pursuit. Advances in Neural Information Processing Systems, 1998, 10:273~279.
  • 4Peng Y H. Wavelet Transform and Engineering Application. Beijing: Science Press, 2003(In Chinese).
  • 5Mallat S G. Characterization of signals from Multiscales edges. NYU,Computer Science Tech. Report, 1991.
  • 6Jiao W D. Research on method of fault diagnosis of rotating machines based on independent component analysis: [PhD Dissertation]. Hangzhou:Zhejiang Universitg, 2003.

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