Electronic Research Archive (Jan 2024)

Research on filtering method of rolling bearing vibration signal based on improved Morlet wavelet

  • Yu Chen,
  • Qingyang Meng ,
  • Zhibo Liu ,
  • Zhuanzhe Zhao,
  • Yongming Liu,
  • Zhijian Tu ,
  • Haoran Zhu

DOI
https://doi.org/10.3934/era.2024012
Journal volume & issue
Vol. 32, no. 1
pp. 241 – 262

Abstract

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In response to the challenge of noise filtering for the impulsive vibration signals of rolling bearings, this paper presented a novel filtering method based on the improved Morlet wavelet, which has clear physical meaning and is more conducive to parameter optimization through employing Gaussian waveform width to replace the traditional Morlet wavelet shape factor. Simultaneously, the marine predation algorithm was employed and the minimum Shannon entropy was used as the parameter optimization index while optimizing the shape width and center frequency of the improved Morlet wavelet. The vibration waveform of the rolling bearing was matched perfectly by using the optimized Morlet wave. Shannon entropy was used as the evaluation index of noise filtering, and the quantitative analysis of noise filtering was realized. Through experimental validation, this method was proved to be effective in noise elimination for rolling bearing. It is significance to preprocessing of vibration signal, feature extraction and fault recognition of rolling bearing.

Keywords