Application of Parameter Adaptive VMD in Bearing Fault Diagnosis

DOI
  • Wang Bing
    China School of Marine Engineering Equipment, Zhejiang Ocean University

抄録

It is a challenging emission for variational mode decomposition to extract effective fault features since fault information in signals is weak and significantly affected by environmental noise. To address the described difficulties, a parameter-adaptive variational mode decomposition is proposed to extract fault features from bearings signals through solving the impact of artificially set parameters in the traditional method. Firstly, the sparrow search algorithm is employed to calculate the fitness function built on the mean envelope entropy for adaptively searching the number of modal decompositions and the penalty factor in variational mode decomposition when operating conditions are different. Secondly, both paraments obtained by the sparrow search algorithm help variational mode decomposition to decompose raw signal for obtaining intrinsic mode function components; and then those components are analyzed by the kurtosis criterion to reconstruct signal. Finally, envelope analysis is performed for the reconstructed signal to reveal a clear relationship between fault characteristic frequencies and harmonics. The proposed method is applied to machinery to demonstrate its effectiveness; the experiment results show that it can effectively reduce the impact of noise and extract fault features for bearing fault diagnosis.

収録刊行物

詳細情報 詳細情報について

  • CRID
    1390016902828188288
  • DOI
    10.14270/ijce2023.a00251.9
  • ISSN
    21862656
    21862680
  • データソース種別
    • JaLC
    • Crossref
  • 抄録ライセンスフラグ
    使用不可

問題の指摘

ページトップへ