Multi-state analysis functional models using Bayesian networks
Multilevel Flow Modeling (MFM) model maps functionality of components in a system through logical interconnections and is effective in predicting success rates of tasks undertaken. However, the output of this model is binary, which is taken at its extrema, i.e., success and failure, while in reality...
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my.utm.680202017-11-28T05:01:10Z http://eprints.utm.my/id/eprint/68020/ Multi-state analysis functional models using Bayesian networks Khalil, Mohamed A. R. Ahmad, Arshad Tuan Abdullah, Tuan Amran Ali Al-Shatri, Ali Hussein Ali Al-Shanini, Ali Hasan TP Chemical technology Multilevel Flow Modeling (MFM) model maps functionality of components in a system through logical interconnections and is effective in predicting success rates of tasks undertaken. However, the output of this model is binary, which is taken at its extrema, i.e., success and failure, while in reality, the operational status of plant components often spans between these end. In this paper, a multi-state model is proposed by adding probabilistic information to the modelling framework. Using a heat exchanger pilot plant as a case study, the MFM model is transformed into its fault tree [1] equivalent to incorporate failure probability information. To facilitate computations, the FT model is transformed into Bayesian Network model, and applied for fault detection and diagnosis problems. The results obtained illustrate the effectiveness and feasibility of the proposed method. Penerbit UTM Press 2016-01-05 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/68020/1/ArshadAhmad2016_MultiStateAnalysisofProcessStatus.pdf Khalil, Mohamed A. R. and Ahmad, Arshad and Tuan Abdullah, Tuan Amran and Ali Al-Shatri, Ali Hussein and Ali Al-Shanini, Ali Hasan (2016) Multi-state analysis functional models using Bayesian networks. Journal Teknologi, 78 (8-3). pp. 33-41. ISSN 0127-9696 https://www.scopus.com/record/display.uri?eid=2-s2.0-84988311405&origin=inward&txGid=715B37077DFEC700BFF22B506FE01FA3.wsnAw8kcdt7IPYLO0V48gA%3a2# |
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TP Chemical technology Khalil, Mohamed A. R. Ahmad, Arshad Tuan Abdullah, Tuan Amran Ali Al-Shatri, Ali Hussein Ali Al-Shanini, Ali Hasan Multi-state analysis functional models using Bayesian networks |
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Multilevel Flow Modeling (MFM) model maps functionality of components in a system through logical interconnections and is effective in predicting success rates of tasks undertaken. However, the output of this model is binary, which is taken at its extrema, i.e., success and failure, while in reality, the operational status of plant components often spans between these end. In this paper, a multi-state model is proposed by adding probabilistic information to the modelling framework. Using a heat exchanger pilot plant as a case study, the MFM model is transformed into its fault tree [1] equivalent to incorporate failure probability information. To facilitate computations, the FT model is transformed into Bayesian Network model, and applied for fault detection and diagnosis problems. The results obtained illustrate the effectiveness and feasibility of the proposed method. |
format |
Article |
author |
Khalil, Mohamed A. R. Ahmad, Arshad Tuan Abdullah, Tuan Amran Ali Al-Shatri, Ali Hussein Ali Al-Shanini, Ali Hasan |
author_facet |
Khalil, Mohamed A. R. Ahmad, Arshad Tuan Abdullah, Tuan Amran Ali Al-Shatri, Ali Hussein Ali Al-Shanini, Ali Hasan |
author_sort |
Khalil, Mohamed A. R. |
title |
Multi-state analysis functional models using Bayesian networks |
title_short |
Multi-state analysis functional models using Bayesian networks |
title_full |
Multi-state analysis functional models using Bayesian networks |
title_fullStr |
Multi-state analysis functional models using Bayesian networks |
title_full_unstemmed |
Multi-state analysis functional models using Bayesian networks |
title_sort |
multi-state analysis functional models using bayesian networks |
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Penerbit UTM Press |
publishDate |
2016 |
url |
http://eprints.utm.my/id/eprint/68020/1/ArshadAhmad2016_MultiStateAnalysisofProcessStatus.pdf http://eprints.utm.my/id/eprint/68020/ https://www.scopus.com/record/display.uri?eid=2-s2.0-84988311405&origin=inward&txGid=715B37077DFEC700BFF22B506FE01FA3.wsnAw8kcdt7IPYLO0V48gA%3a2# |
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13.214268 |