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A dynamic auto-adaptive predictive maintenance policy for degradation with unknown parameters
Journal article   Peer reviewed

A dynamic auto-adaptive predictive maintenance policy for degradation with unknown parameters

E. Mosayebi Omshi, A. Grall and Soudabeh Shemehsavar
European journal of operational research, Vol.282(1), pp.81-92
2020

Abstract

Applications Automatic Engineering Sciences Methodology Statistics
With the development of monitoring equipment, research on condition-based maintenance (CBM) is rapidly growing. CBM optimization aims to find an optimal CBM policy which minimizes the average cost of the system over a specified duration of time. This paper proposes a dynamic auto-adaptive predictive maintenance policy for single-unit systems whose gradual deterioration is governed by an increasing stochastic process. The parameters of the degradation process are assumed to be unknown and Bayes' theorem is used to update the prior information. The time interval between two successive inspections is scheduled based on the remaining useful life (RUL) of the system and is updated along with the degradation parameters. A procedure is proposed to dynamically adapt the maintenance decision variables accordingly. Finally, different possible maintenance policies are considered and compared to illustrate their performance.

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Collaboration types
Domestic collaboration
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Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.237 Safety & Maintenance
4.237.651 Reliability Engineering
Web Of Science research areas
Management
Operations Research & Management Science
ESI research areas
Engineering
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