Small sample composite fault diagnosis of hydraulic bearings based on improved VME algorithm and mRVM

Authors

  • Jorge Nocedal
  • Matthew Baker
  • Elizabeth King
  • Joshua Perez

DOI:

https://doi.org/10.59782/aai.v1i2.296

Keywords:

fault diagnosis, variational mode decomposition, Laplace energy index, variational mode extraction, multi-classification relevance vector machine, DS evidence theory Chinese Library Classification Number: TH17, TP277

Abstract

The working environment of rolling bearings is complex. Once a fault occurs, various parts will affect each other and produce a compound fault. Traditional methods often use signal separation algorithms to separate different types of signals for fault diagnosis, but it is difficult to analyze specific faults efficiently and accurately. To solve this problem, this paper combines variational mode decomposition (VMD), Laplace energy index (LE) and variational mode extraction (VME) for signal extraction. Multi-class relevance vector machine (mRVM) and DS evidence theory are used for intelligent fault diagnosis, focusing on the context of small sample data. First, the VMD-LE-VME method is used to extract effective fault information from the fault signal and obtain multi-domain features. Then, the multi-domain features are input into mRVM for fault identification. Finally, the classification results are fused through DS evidence theory to obtain the final classification results. The effectiveness and superiority of this method in processing small sample data are verified by experiments.

How to Cite

Nocedal, J., Baker, M., King, E., & Perez, J. (2024). Small sample composite fault diagnosis of hydraulic bearings based on improved VME algorithm and mRVM. Journal of Applied Artificial Intelligence, 1(2), 134–143. https://doi.org/10.59782/aai.v1i2.296

Issue

Section

Articles