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Bearing Fault Prognosis Method Based on Priori Knowledge-Enhanced Particle Filter

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  • Jiayong Liu
  • Peng Luo
  • Jian Shen
  • Junwei Ma

Abstract

A priori knowledge-enhanced particle filter (PKE-PF) method is proposed to solve the problem of particle impoverishment in bearing fault prognosis with incomplete data. Based on the existing bearing life degradation data and the parameter transfer method in the transfer learning theory, particle initialization optimization, which is very important in the PF method, is carried out to effectively improve particle effectiveness and avoid the problem of premature particle exhaustion. Based on the whole-life degradation experiment of rolling bearings, the validation results show that the traditional PF method and its improved method are prone to particle exhaustion, which seriously affects the fault prediction results. The PKE-PF method proposed in this paper can effectively avoid the problem of premature particle depletion and obtain a more ideal fault prognosis results.

Suggested Citation

  • Jiayong Liu & Peng Luo & Jian Shen & Junwei Ma, 2022. "Bearing Fault Prognosis Method Based on Priori Knowledge-Enhanced Particle Filter," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-13, December.
  • Handle: RePEc:hin:jnlmpe:8634753
    DOI: 10.1155/2022/8634753
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