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A dynamic multi-scale Markov model based methodology for remaining life prediction
Authors:Jihong Yan  Chaozhong GuoXing Wang
Affiliation:Department of Industrial Engineering, Center for Advanced Production Technology, Harbin Institute of Technology, Harbin Institute of Technology, Mailbox 204, Harbin, China
Abstract:The ability to accurately predict the remaining life of partially degraded components is crucial in prognostics. In this paper, a performance degradation index is designed using multi-feature fusion techniques to represent deterioration severities of facilities. Based on this indicator, an improved Markov model is proposed for remaining life prediction. Fuzzy C-Means (FCM) algorithm is employed to perform state division for Markov model in order to avoid the uncertainty of state division caused by the hard division approach. Considering the influence of both historical and real time data, a dynamic prediction method is introduced into Markov model by a weighted coefficient. Multi-scale theory is employed to solve the state division problem of multi-sample prediction. Consequently, a dynamic multi-scale Markov model is constructed. An experiment is designed based on a Bently-RK4 rotor testbed to validate the dynamic multi-scale Markov model, experimental results illustrate the effectiveness of the methodology.
Keywords:Prognostics  Remaining life prediction  Markov model  Multi-scale theory  Dynamic prediction
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