Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review

Hydrocarbon fluid integrity evaluation in oil and gas pipelines is important for anticipating HSE measures. Ignoring corrosion is unavoidable and may have severe personal, economic, and environmental consequences. To anticipate corrosion's unexpected behavior, most research relies on determinis...

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Main Authors: Soomro, A.A., Mokhtar, A.A., Kurnia, J.C., Lashari, N., Lu, H., Sambo, C.
Format: Article
Published: Elsevier Ltd 2022
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85117770376&doi=10.1016%2fj.engfailanal.2021.105810&partnerID=40&md5=d84e3280689c46bad77980c175ad2b39
http://eprints.utp.edu.my/28889/
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spelling my.utp.eprints.288892022-03-29T07:46:43Z Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review Soomro, A.A. Mokhtar, A.A. Kurnia, J.C. Lashari, N. Lu, H. Sambo, C. Hydrocarbon fluid integrity evaluation in oil and gas pipelines is important for anticipating HSE measures. Ignoring corrosion is unavoidable and may have severe personal, economic, and environmental consequences. To anticipate corrosion's unexpected behavior, most research relies on deterministic and probabilistic models. However, machine learning-based approaches are better suited to the complex and extensive nature of degraded oil and gas pipelines. Also, using machine learning to assess integrity is a new study field. As a result, the literature lacks a comprehensive evaluation of current research issues. This study's goal is to evaluate the current state of machine learning (methods, variables, and datasets) and propose future directions for practitioners and academics. Currently, machine learning techniques are favored for predicting the integrity of damaged oil and gas pipelines. ANN, SVM, and hybrid models outperform due to the combined strength of the constituent models. Given the benefits of both, most popular machine learning researchers favor hybrid models over standalone models. We found that most current research utilizes field data, simulation data, and experimental data, with field data being the most often used. Temperature, pH, pressure, and velocity are input characteristics that have been included in most studies, demonstrating their importance in corroded oil and gas pipeline integrity assessment. This study also identified research gaps and shortcomings such as data availability, accuracy, and validation. Finally, some future suggestions and recommendations are proposed. © 2021 Elsevier Ltd Elsevier Ltd 2022 Article NonPeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-85117770376&doi=10.1016%2fj.engfailanal.2021.105810&partnerID=40&md5=d84e3280689c46bad77980c175ad2b39 Soomro, A.A. and Mokhtar, A.A. and Kurnia, J.C. and Lashari, N. and Lu, H. and Sambo, C. (2022) Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review. Engineering Failure Analysis, 131 . http://eprints.utp.edu.my/28889/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description Hydrocarbon fluid integrity evaluation in oil and gas pipelines is important for anticipating HSE measures. Ignoring corrosion is unavoidable and may have severe personal, economic, and environmental consequences. To anticipate corrosion's unexpected behavior, most research relies on deterministic and probabilistic models. However, machine learning-based approaches are better suited to the complex and extensive nature of degraded oil and gas pipelines. Also, using machine learning to assess integrity is a new study field. As a result, the literature lacks a comprehensive evaluation of current research issues. This study's goal is to evaluate the current state of machine learning (methods, variables, and datasets) and propose future directions for practitioners and academics. Currently, machine learning techniques are favored for predicting the integrity of damaged oil and gas pipelines. ANN, SVM, and hybrid models outperform due to the combined strength of the constituent models. Given the benefits of both, most popular machine learning researchers favor hybrid models over standalone models. We found that most current research utilizes field data, simulation data, and experimental data, with field data being the most often used. Temperature, pH, pressure, and velocity are input characteristics that have been included in most studies, demonstrating their importance in corroded oil and gas pipeline integrity assessment. This study also identified research gaps and shortcomings such as data availability, accuracy, and validation. Finally, some future suggestions and recommendations are proposed. © 2021 Elsevier Ltd
format Article
author Soomro, A.A.
Mokhtar, A.A.
Kurnia, J.C.
Lashari, N.
Lu, H.
Sambo, C.
spellingShingle Soomro, A.A.
Mokhtar, A.A.
Kurnia, J.C.
Lashari, N.
Lu, H.
Sambo, C.
Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
author_facet Soomro, A.A.
Mokhtar, A.A.
Kurnia, J.C.
Lashari, N.
Lu, H.
Sambo, C.
author_sort Soomro, A.A.
title Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
title_short Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
title_full Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
title_fullStr Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
title_full_unstemmed Integrity assessment of corroded oil and gas pipelines using machine learning: A systematic review
title_sort integrity assessment of corroded oil and gas pipelines using machine learning: a systematic review
publisher Elsevier Ltd
publishDate 2022
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85117770376&doi=10.1016%2fj.engfailanal.2021.105810&partnerID=40&md5=d84e3280689c46bad77980c175ad2b39
http://eprints.utp.edu.my/28889/
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score 13.160551