Dynamic civil facility degradation prediction for rare defects under imperfect maintenance

PurposeThis paper aims to develop a dynamic civil facility degradation prediction model to forecast the reliability performance tendency and remaining useful life under imperfect maintenance based on the inspection records and the maintenance actions.Design/methodology/approachA real-time hidden Mar...

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Veröffentlicht in:Journal of quality in maintenance engineering 2024-02, Vol.30 (1), p.81-100
Hauptverfasser: Leu, Sou-Sen, Fu, Yen-Lin, Wu, Pei-Lin
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container_title Journal of quality in maintenance engineering
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creator Leu, Sou-Sen
Fu, Yen-Lin
Wu, Pei-Lin
description PurposeThis paper aims to develop a dynamic civil facility degradation prediction model to forecast the reliability performance tendency and remaining useful life under imperfect maintenance based on the inspection records and the maintenance actions.Design/methodology/approachA real-time hidden Markov chain (HMM) model is proposed in this paper to predict the reliability performance tendency and remaining useful life under imperfect maintenance based on rare failure events. The model assumes a Poisson arrival pattern for facility failure events occurrence. HMM is further adopted to establish the transmission probabilities among stages. Finally, the simulation inference is conducted using Particle filter (PF) to estimate the most probable model parameters. Water seals at the spillway hydraulic gate in a Taiwan's reservoir are used to examine the appropriateness of the approach.FindingsThe results of defect probabilities tendency from the real-time HMM model are highly consistent with the real defect trend pattern of civil facilities. The proposed facility degradation prediction model can provide the maintenance division with early warning of potential failure to establish a proper proactive maintenance plan, even under the condition of rare defects.Originality/valueThis model is a new method of civil facility degradation prediction under imperfect maintenance, even with rare failure events. It overcomes several limitations of classical failure pattern prediction approaches and can reliably simulate the occurrence of rare defects under imperfect maintenance and the effect of inspection reliability caused by human error. Based on the degradation trend pattern prediction, effective maintenance management plans can be practically implemented to minimize the frequency of the occurrence and the consequence of civil facility failures.
doi_str_mv 10.1108/JQME-01-2023-0001
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Technology Collection</collection><jtitle>Journal of quality in maintenance engineering</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Leu, Sou-Sen</au><au>Fu, Yen-Lin</au><au>Wu, Pei-Lin</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Dynamic civil facility degradation prediction for rare defects under imperfect maintenance</atitle><jtitle>Journal of quality in maintenance engineering</jtitle><date>2024-02-23</date><risdate>2024</risdate><volume>30</volume><issue>1</issue><spage>81</spage><epage>100</epage><pages>81-100</pages><issn>1355-2511</issn><eissn>1758-7832</eissn><abstract>PurposeThis paper aims to develop a dynamic civil facility degradation prediction model to forecast the reliability performance tendency and remaining useful life under imperfect maintenance based on the inspection records and the maintenance actions.Design/methodology/approachA real-time hidden Markov chain (HMM) model is proposed in this paper to predict the reliability performance tendency and remaining useful life under imperfect maintenance based on rare failure events. 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subjects Algorithms
Artificial intelligence
Defects
Degradation
Engineering
Failure
Human error
Hydraulic gates
Inspection
Literature reviews
Maintenance management
Markov chains
Neural networks
Prediction models
Preventive maintenance
Real time
Reliability
Useful life
title Dynamic civil facility degradation prediction for rare defects under imperfect maintenance
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