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Recent Patents on Engineering

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ISSN (Print): 1872-2121
ISSN (Online): 2212-4047

Review Article

Remaining Useful life Estimation: A Review on Stochastic Process-based Approaches

Author(s): Dangbo Du, Jianxun Zhang, Xiaosheng Si* and Changhua Hu

Volume 15, Issue 1, 2021

Published on: 23 April, 2020

Page: [69 - 76] Pages: 8

DOI: 10.2174/1872212114999200423115526

Price: $65

Abstract

Background: Remaining Useful Life (RUL) estimation is the central mission to the complex systems’ prognostics and health management. During the last decades, numbers of developments and applications of the RUL estimation have proliferated.

Objective: As one of the most popular approaches, stochastic process-based approach has been widely used for characterizing the degradation trajectories and estimating RULs. This paper aimed at reviewing the latest methods and patents on this topic.

Methods: The review is concentrated on four common stochastic processes for degradation modelling and RUL estimation, i.e., Gamma process, Wiener process, inverse Gaussian process and Markov chain.

Results: After a brief review of these four models, we pointed out the pros and cons of them, as well as the improvement direction of each method.

Conclusion: For better implementation, the applications of these four approaches on maintenance and decision-making are systematically introduced. Finally, possible future trends are concluded tentatively.

Keywords: Remaining useful life, degradation modeling, stochastic process models, reliability, prognostics and health management, condition-based maintenance.

Graphical Abstract
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