Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network

This paper presents a quantitative reliability modelling and analysis method for multi-state elements based on a combination of the Markov process and a dynamic Bayesian network (DBN), taking perfect repair, imperfect repair and condition-based maintenance (CBM) into consideration. The Markov models...

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Main Authors: Zhiqiang Li, Tingxue Xu, Junyuan Gu, Qi Dong, Linyu Fu
Format: Article
Language:English
Published: The Royal Society 2018-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.171438
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spelling doaj-7c89bd6aabc6448faa00d0d1aaaca06f2020-11-25T04:08:29ZengThe Royal SocietyRoyal Society Open Science2054-57032018-01-015410.1098/rsos.171438171438Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian networkZhiqiang LiTingxue XuJunyuan GuQi DongLinyu FuThis paper presents a quantitative reliability modelling and analysis method for multi-state elements based on a combination of the Markov process and a dynamic Bayesian network (DBN), taking perfect repair, imperfect repair and condition-based maintenance (CBM) into consideration. The Markov models of elements without repair and under CBM are established, and an absorbing set is introduced to determine the reliability of the repairable element. According to the state-transition relations between the states determined by the Markov process, a DBN model is built. In addition, its parameters for series and parallel systems, namely, conditional probability tables, can be calculated by referring to the conditional degradation probabilities. Finally, the power of a control unit in a failure model is used as an example. A dynamic fault tree (DFT) is translated into a Bayesian network model, and subsequently extended to a DBN. The results show the state probabilities of an element and the system without repair, with perfect and imperfect repair, and under CBM, with an absorbing set plotted by differential equations and verified. Through referring forward, the reliability value of the control unit is determined in different kinds of modes. Finally, weak nodes are noted in the control unit.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.171438multi-state elementmarkov processdynamic bayesian networkcondition-based maintenanceconditional probability tabledynamic fault tree
collection DOAJ
language English
format Article
sources DOAJ
author Zhiqiang Li
Tingxue Xu
Junyuan Gu
Qi Dong
Linyu Fu
spellingShingle Zhiqiang Li
Tingxue Xu
Junyuan Gu
Qi Dong
Linyu Fu
Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
Royal Society Open Science
multi-state element
markov process
dynamic bayesian network
condition-based maintenance
conditional probability table
dynamic fault tree
author_facet Zhiqiang Li
Tingxue Xu
Junyuan Gu
Qi Dong
Linyu Fu
author_sort Zhiqiang Li
title Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
title_short Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
title_full Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
title_fullStr Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
title_full_unstemmed Reliability modelling and analysis of a multi-state element based on a dynamic Bayesian network
title_sort reliability modelling and analysis of a multi-state element based on a dynamic bayesian network
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2018-01-01
description This paper presents a quantitative reliability modelling and analysis method for multi-state elements based on a combination of the Markov process and a dynamic Bayesian network (DBN), taking perfect repair, imperfect repair and condition-based maintenance (CBM) into consideration. The Markov models of elements without repair and under CBM are established, and an absorbing set is introduced to determine the reliability of the repairable element. According to the state-transition relations between the states determined by the Markov process, a DBN model is built. In addition, its parameters for series and parallel systems, namely, conditional probability tables, can be calculated by referring to the conditional degradation probabilities. Finally, the power of a control unit in a failure model is used as an example. A dynamic fault tree (DFT) is translated into a Bayesian network model, and subsequently extended to a DBN. The results show the state probabilities of an element and the system without repair, with perfect and imperfect repair, and under CBM, with an absorbing set plotted by differential equations and verified. Through referring forward, the reliability value of the control unit is determined in different kinds of modes. Finally, weak nodes are noted in the control unit.
topic multi-state element
markov process
dynamic bayesian network
condition-based maintenance
conditional probability table
dynamic fault tree
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.171438
work_keys_str_mv AT zhiqiangli reliabilitymodellingandanalysisofamultistateelementbasedonadynamicbayesiannetwork
AT tingxuexu reliabilitymodellingandanalysisofamultistateelementbasedonadynamicbayesiannetwork
AT junyuangu reliabilitymodellingandanalysisofamultistateelementbasedonadynamicbayesiannetwork
AT qidong reliabilitymodellingandanalysisofamultistateelementbasedonadynamicbayesiannetwork
AT linyufu reliabilitymodellingandanalysisofamultistateelementbasedonadynamicbayesiannetwork
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