Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach

Detalhes bibliográficos
Autor(a) principal: Elmas, Fernanda Ramos
Data de Publicação: 2023
Outros Autores: Rios, Marina Polonia, Lima, Eduardo Rocha de Almeida, caiado, Rodrigo Goyannes Gusmão, Santos, Renan Silva
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Brazilian Journal of Operations & Production Management (Online)
Texto Completo: https://bjopm.org.br/bjopm/article/view/1952
Resumo: Goal: This study aims to use artificial intelligence, specifically a random forest model, to predict the annual corrosion rate on FPSO offshore platforms in the oil and gas industry. Corrosion is a significant cause of equipment failure, leading to costly replacements. The random forest model, a machine learning technique, was developed using climatic and other relevant data to forecast corrosion trends based on selected variables. Design/methodology/approach: The methodology involved four steps: identifying influential factors affecting corrosion, selecting factors based on reliability and accessibility of measurements, applying the machine learning model to predict annual corrosion progression, and comparing the random forest model with other ML models. Results - The results showed that the random forest regression model successfully predicted corrosion rates, indicating an average yearly increase of 2.43% on the analyzed platforms. The main factors influencing this increase were wind speed, percentage of measured corrosion, and platform operating time. Regions with higher incidence of these factors are likely to experience higher corrosion rates, necessitating more frequent maintenance. Limitations of the investigation - The research sample consisted exclusively of 4 platforms located in the offshore region of Rio de Janeiro, Brazil. Thus, the results obtained must be interpreted as representative of these platforms and respective climate conditions. Practical implications – The use of data science tools to improve corrosion management allows managers to have knowledge of which areas has a greater or lesser tendency to corrode, helping to prioritize maintenance activities over time. Originality/value - This study aims to fill gaps regarding the use of random forest techniques for regression focused on predicting the rate of increase in corrosion. It offers a novel approach to assist decision-making in maintenance planning, providing insights into influential corrosion factors and facilitating more effective painting plans to preserve industrial unit integrity.
id ABEPRO_81416d306174bb2c9f9bd39860db8f2a
oai_identifier_str oai:ojs.bjopm.org.br:article/1952
network_acronym_str ABEPRO
network_name_str Brazilian Journal of Operations & Production Management (Online)
repository_id_str
spelling Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approachCorrosionMaintenance PlanRandom Forest Regressor Corrosion rateGoal: This study aims to use artificial intelligence, specifically a random forest model, to predict the annual corrosion rate on FPSO offshore platforms in the oil and gas industry. Corrosion is a significant cause of equipment failure, leading to costly replacements. The random forest model, a machine learning technique, was developed using climatic and other relevant data to forecast corrosion trends based on selected variables. Design/methodology/approach: The methodology involved four steps: identifying influential factors affecting corrosion, selecting factors based on reliability and accessibility of measurements, applying the machine learning model to predict annual corrosion progression, and comparing the random forest model with other ML models. Results - The results showed that the random forest regression model successfully predicted corrosion rates, indicating an average yearly increase of 2.43% on the analyzed platforms. The main factors influencing this increase were wind speed, percentage of measured corrosion, and platform operating time. Regions with higher incidence of these factors are likely to experience higher corrosion rates, necessitating more frequent maintenance. Limitations of the investigation - The research sample consisted exclusively of 4 platforms located in the offshore region of Rio de Janeiro, Brazil. Thus, the results obtained must be interpreted as representative of these platforms and respective climate conditions. Practical implications – The use of data science tools to improve corrosion management allows managers to have knowledge of which areas has a greater or lesser tendency to corrode, helping to prioritize maintenance activities over time. Originality/value - This study aims to fill gaps regarding the use of random forest techniques for regression focused on predicting the rate of increase in corrosion. It offers a novel approach to assist decision-making in maintenance planning, providing insights into influential corrosion factors and facilitating more effective painting plans to preserve industrial unit integrity.Brazilian Association for Industrial Engineering and Operations Management (ABEPRO)2023-09-22info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionResearch paperapplication/pdfhttps://bjopm.org.br/bjopm/article/view/195210.14488/BJOPM.1952.2023Brazilian Journal of Operations & Production Management; Vol. 20 No. 3 (2023): Special edition; 19522237-8960reponame:Brazilian Journal of Operations & Production Management (Online)instname:Associação Brasileira de Engenharia de Produção (ABEPRO)instacron:ABEPROenghttps://bjopm.org.br/bjopm/article/view/1952/1050Copyright (c) 2023 Fernanda Ramos Elmas, Marina Polonia Rios, Eduardo Rocha de Almeida Lima, Rodrigo Goyannes Gusmão caiado, Renan Silva Santoshttp://creativecommons.org/licenses/by/4.0info:eu-repo/semantics/openAccessElmas, Fernanda RamosRios, Marina PoloniaLima, Eduardo Rocha de Almeidacaiado, Rodrigo Goyannes GusmãoSantos, Renan Silva2023-10-31T14:29:18Zoai:ojs.bjopm.org.br:article/1952Revistahttps://bjopm.org.br/bjopmONGhttps://bjopm.org.br/bjopm/oaibjopm.journal@gmail.com2237-89601679-8171opendoar:2023-10-31T14:29:18Brazilian Journal of Operations & Production Management (Online) - Associação Brasileira de Engenharia de Produção (ABEPRO)false
dc.title.none.fl_str_mv Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
title Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
spellingShingle Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
Elmas, Fernanda Ramos
Corrosion
Maintenance Plan
Random Forest Regressor
Corrosion rate
title_short Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
title_full Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
title_fullStr Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
title_full_unstemmed Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
title_sort Prediction of external corrosion rate in Oil and Gas platforms using ensemble learning: a Maintenance 4.0 approach
author Elmas, Fernanda Ramos
author_facet Elmas, Fernanda Ramos
Rios, Marina Polonia
Lima, Eduardo Rocha de Almeida
caiado, Rodrigo Goyannes Gusmão
Santos, Renan Silva
author_role author
author2 Rios, Marina Polonia
Lima, Eduardo Rocha de Almeida
caiado, Rodrigo Goyannes Gusmão
Santos, Renan Silva
author2_role author
author
author
author
dc.contributor.author.fl_str_mv Elmas, Fernanda Ramos
Rios, Marina Polonia
Lima, Eduardo Rocha de Almeida
caiado, Rodrigo Goyannes Gusmão
Santos, Renan Silva
dc.subject.por.fl_str_mv Corrosion
Maintenance Plan
Random Forest Regressor
Corrosion rate
topic Corrosion
Maintenance Plan
Random Forest Regressor
Corrosion rate
description Goal: This study aims to use artificial intelligence, specifically a random forest model, to predict the annual corrosion rate on FPSO offshore platforms in the oil and gas industry. Corrosion is a significant cause of equipment failure, leading to costly replacements. The random forest model, a machine learning technique, was developed using climatic and other relevant data to forecast corrosion trends based on selected variables. Design/methodology/approach: The methodology involved four steps: identifying influential factors affecting corrosion, selecting factors based on reliability and accessibility of measurements, applying the machine learning model to predict annual corrosion progression, and comparing the random forest model with other ML models. Results - The results showed that the random forest regression model successfully predicted corrosion rates, indicating an average yearly increase of 2.43% on the analyzed platforms. The main factors influencing this increase were wind speed, percentage of measured corrosion, and platform operating time. Regions with higher incidence of these factors are likely to experience higher corrosion rates, necessitating more frequent maintenance. Limitations of the investigation - The research sample consisted exclusively of 4 platforms located in the offshore region of Rio de Janeiro, Brazil. Thus, the results obtained must be interpreted as representative of these platforms and respective climate conditions. Practical implications – The use of data science tools to improve corrosion management allows managers to have knowledge of which areas has a greater or lesser tendency to corrode, helping to prioritize maintenance activities over time. Originality/value - This study aims to fill gaps regarding the use of random forest techniques for regression focused on predicting the rate of increase in corrosion. It offers a novel approach to assist decision-making in maintenance planning, providing insights into influential corrosion factors and facilitating more effective painting plans to preserve industrial unit integrity.
publishDate 2023
dc.date.none.fl_str_mv 2023-09-22
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Research paper
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://bjopm.org.br/bjopm/article/view/1952
10.14488/BJOPM.1952.2023
url https://bjopm.org.br/bjopm/article/view/1952
identifier_str_mv 10.14488/BJOPM.1952.2023
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://bjopm.org.br/bjopm/article/view/1952/1050
dc.rights.driver.fl_str_mv http://creativecommons.org/licenses/by/4.0
info:eu-repo/semantics/openAccess
rights_invalid_str_mv http://creativecommons.org/licenses/by/4.0
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Brazilian Association for Industrial Engineering and Operations Management (ABEPRO)
publisher.none.fl_str_mv Brazilian Association for Industrial Engineering and Operations Management (ABEPRO)
dc.source.none.fl_str_mv Brazilian Journal of Operations & Production Management; Vol. 20 No. 3 (2023): Special edition; 1952
2237-8960
reponame:Brazilian Journal of Operations & Production Management (Online)
instname:Associação Brasileira de Engenharia de Produção (ABEPRO)
instacron:ABEPRO
instname_str Associação Brasileira de Engenharia de Produção (ABEPRO)
instacron_str ABEPRO
institution ABEPRO
reponame_str Brazilian Journal of Operations & Production Management (Online)
collection Brazilian Journal of Operations & Production Management (Online)
repository.name.fl_str_mv Brazilian Journal of Operations & Production Management (Online) - Associação Brasileira de Engenharia de Produção (ABEPRO)
repository.mail.fl_str_mv bjopm.journal@gmail.com
_version_ 1797051459492118528