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A hybrid prognostic framework: Stochastic degradation process with adaptive trajectory learning to transfer historical health knowledge

  • Fanping Wei
  • , Longyan Tan
  • , Xiaobing Ma
  • , Hui Xiao
  • , Dhavalkumar Patel
  • , Chi Guhn Lee
  • , Li Yang*
  • *此作品的通讯作者
  • Beihang University
  • National University of Singapore
  • Southwestern University of Finance and Economics
  • University of Toronto

科研成果: 期刊稿件文章同行评审

摘要

Remaining useful life (RUL) prediction is crucial to supporting intelligent maintenance and health management of safety–critical products. Although advanced data-driven approaches such as deep neural networks are effective in processing high-dimensional non-linear health features, their application to field RUL prediction confronts with two challenges: (a) adaptivity of the lifetime parameter learning process is often restricted, and (b) prediction of multi-source uncertainties is almost analytically intractable. This paper addresses such challenges by devising a tractable, global adaptive model-data-interaction prognostic framework, where a non-linear stochastic degradation model governed by self-adaptive trajectory pattern is constructed to transfer historical health knowledge. In particular, a joint parameter learning framework is established under the structure of a multi-branch Bayesian network, such that to simultaneously learn: (a) degradation model parameters, and (b) network hyper-parameters. Additionally, the key control parameters of the degradation process are updated adaptively leveraging multi-dimensional sequential Bayesian learning. An efficient interpolation algorithm is further proposed to alleviate computation burden of RUL distributions. Case studies conducted on both turbofan engines degradation data and field train bearing vibration data demonstrate the superior model performance compared to existing methodologies.

源语言英语
文章编号112171
期刊Mechanical Systems and Signal Processing
224
DOI
出版状态已出版 - 1 2月 2025

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