A Bayesian‐Markov process for reliability prediction


Autoria(s): Sun, Yong; Ma, Lin; Fidge, Colin J.
Data(s)

2011

Resumo

Accurate reliability prediction for large-scale, long lived engineering is a crucial foundation for effective asset risk management and optimal maintenance decision making. However, a lack of failure data for assets that fail infrequently, and changing operational conditions over long periods of time, make accurate reliability prediction for such assets very challenging. To address this issue, we present a Bayesian-Marko best approach to reliability prediction using prior knowledge and condition monitoring data. In this approach, the Bayesian theory is used to incorporate prior information about failure probabilities and current information about asset health to make statistical inferences, while Markov chains are used to update and predict the health of assets based on condition monitoring data. The prior information can be supplied by domain experts, extracted from previous comparable cases or derived from basic engineering principles. Our approach differs from existing hybrid Bayesian models which are normally used to update the parameter estimation of a given distribution such as the Weibull-Bayesian distribution or the transition probabilities of a Markov chain. Instead, our new approach can be used to update predictions of failure probabilities when failure data are sparse or nonexistent, as is often the case for large-scale long-lived engineering assets.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/49352/

Publicador

COMADEM International

Relação

http://eprints.qut.edu.au/49352/1/YSunEtAl_COMADEM2011.pdf

Sun, Yong, Ma, Lin, & Fidge, Colin J. (2011) A Bayesian‐Markov process for reliability prediction. In Proceedings of the 24th International Congress on Condition Monitoring and Diagnostics Engineering Management (COMADEM), COMADEM International, Clarion Hotel, Stavanger, Norway.

Direitos

Copyright 2011 [please consult the authors]

Fonte

School of Chemistry, Physics & Mechanical Engineering; School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #080608 Information Systems Development Methodologies #Reliability prediction #Condition monitoring #Bayesian Markov process
Tipo

Conference Paper