Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells
There is increasing interest to consider dependent failures and human errors in the offshore industry. Permanently abandoned wells dot most of the subsea environment. The nature of a well plugging and abandonment (Well P&A) run - usually the lowest-cost contractor engaged to plug several wells t...
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sg-ntu-dr.10356-1648562023-02-20T06:54:33Z Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells Fam, Mei Ling He, Xuhong Konovessis, Dimitrios Ong, Lin Seng School of Mechanical and Aerospace Engineering Engineering::Mechanical engineering Offshore Decommissioning Bayesian Belief Networks There is increasing interest to consider dependent failures and human errors in the offshore industry. Permanently abandoned wells dot most of the subsea environment. The nature of a well plugging and abandonment (Well P&A) run - usually the lowest-cost contractor engaged to plug several wells tapping the same reservoir makes it an ideal case study for incorporating failures based on common causes. The heavy use of operators during a cementing job also provides the case for analysis of human error in such tasks. One proposed method to analyse the above-mentioned is the use of Bayesian Belief Networks to achieve the following objectives (1) to capture better estimates of a well PA event by incorporating dependencies, and meet regulatory requirements by authorities; and (2) to use the same model to provide long term monitoring of a group of wells linked by common dependencies. This model has not only captured the dependencies of multiple variables, but also projected it in a dynamic manner to provide a risk profile for the next decade where well integrity failure is likely to happen. • Proposed adapted method capture better estimates of a well PA event by incorporating dependencies • Method allows for extension of model to long term monitoring of a group of wells linked by common dependencies. Economic Development Board (EDB) Nanyang Technological University Published version The authors would like to acknowledge the support of the Lloyd’s Register Singapore, Vysus Group (Stockholm, Sweden), Nanyang Technological University, Singapore Institute of Technology and the Singapore Economic Development Board (EDB) under the Industrial Postgraduate Program in the under-taking of this work. 2023-02-20T06:54:33Z 2023-02-20T06:54:33Z 2022 Journal Article Fam, M. L., He, X., Konovessis, D. & Ong, L. S. (2022). Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells. MethodsX, 9, 101600-. https://dx.doi.org/10.1016/j.mex.2021.101600 2215-0161 https://hdl.handle.net/10356/164856 10.1016/j.mex.2021.101600 34976750 2-s2.0-85121100074 9 101600 en MethodsX © 2021 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Engineering::Mechanical engineering Offshore Decommissioning Bayesian Belief Networks Fam, Mei Ling He, Xuhong Konovessis, Dimitrios Ong, Lin Seng Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
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There is increasing interest to consider dependent failures and human errors in the offshore industry. Permanently abandoned wells dot most of the subsea environment. The nature of a well plugging and abandonment (Well P&A) run - usually the lowest-cost contractor engaged to plug several wells tapping the same reservoir makes it an ideal case study for incorporating failures based on common causes. The heavy use of operators during a cementing job also provides the case for analysis of human error in such tasks. One proposed method to analyse the above-mentioned is the use of Bayesian Belief Networks to achieve the following objectives (1) to capture better estimates of a well PA event by incorporating dependencies, and meet regulatory requirements by authorities; and (2) to use the same model to provide long term monitoring of a group of wells linked by common dependencies. This model has not only captured the dependencies of multiple variables, but also projected it in a dynamic manner to provide a risk profile for the next decade where well integrity failure is likely to happen. • Proposed adapted method capture better estimates of a well PA event by incorporating dependencies • Method allows for extension of model to long term monitoring of a group of wells linked by common dependencies. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Fam, Mei Ling He, Xuhong Konovessis, Dimitrios Ong, Lin Seng |
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Article |
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Fam, Mei Ling He, Xuhong Konovessis, Dimitrios Ong, Lin Seng |
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Fam, Mei Ling |
title |
Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
title_short |
Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
title_full |
Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
title_fullStr |
Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
title_full_unstemmed |
Dynamic Bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
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dynamic bayesian belief network for long-term monitoring and system barrier failure analysis: decommissioned wells |
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2023 |
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https://hdl.handle.net/10356/164856 |
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