Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm
One of the most important aspects of the oil and gas industry is asset management at their respective platforms. Without proper asset management, it will lead to various unexpected scenarios including an increase in plant deterioration, increased chances of accidents and injuries, and breakdown of a...
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2023
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oai:utpedia.utp.edu.my:240252023-09-14T07:20:22Z http://utpedia.utp.edu.my/id/eprint/24025/ Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm Aziz, Norshakirah Abdullah, Mohd Hafizul Afifi Osman, Nurul Aida Musa, Muhamad Nabil Akhir, Emelia Akashah Patah T Technology (General) One of the most important aspects of the oil and gas industry is asset management at their respective platforms. Without proper asset management, it will lead to various unexpected scenarios including an increase in plant deterioration, increased chances of accidents and injuries, and breakdown of assets at unexpected times which will lead to poor and hurried maintenance. Given the significant economic contribution of the oil and gas sector to oil-producing countries like Malaysia, accurate asset maintenance prediction is essential to ensure that the oil and gas platform can manage its operations profitably. This research identifies the parameters affecting the asset failure on oil and platform that will be interpreted using the XGBoost gradient boosting model from machine learning libraries. The model is used to predict the asset's lifetime based on readings collected from the sensors of each machine. From result, our prediction method using XGBoost for asset maintenance has presented a 6.43% increase in classification accuracy as compared to the Random Forest algorithm. Springer International Publishing 2023-01 Conference or Workshop Item PeerReviewed Aziz, Norshakirah and Abdullah, Mohd Hafizul Afifi and Osman, Nurul Aida and Musa, Muhamad Nabil and Akhir, Emelia Akashah Patah (2023) Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm. In: Proceedings of the 2nd International Conference on Emerging Technologies and Intelligent Systems. |
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T Technology (General) Aziz, Norshakirah Abdullah, Mohd Hafizul Afifi Osman, Nurul Aida Musa, Muhamad Nabil Akhir, Emelia Akashah Patah Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
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One of the most important aspects of the oil and gas industry is asset management at their respective platforms. Without proper asset management, it will lead to various unexpected scenarios including an increase in plant deterioration, increased chances of accidents and injuries, and breakdown of assets at unexpected times which will lead to poor and hurried maintenance. Given the significant economic contribution of the oil and gas sector to oil-producing countries like Malaysia, accurate asset maintenance prediction is essential to ensure that the oil and gas platform can manage its operations profitably. This research identifies the parameters affecting the asset failure on oil and platform that will be interpreted using the XGBoost gradient boosting model from machine learning libraries. The model is used to predict the asset's lifetime based on readings collected from the sensors of each machine. From result, our prediction method using XGBoost for asset maintenance has presented a 6.43% increase in classification accuracy as compared to the Random Forest algorithm. |
format |
Conference or Workshop Item |
author |
Aziz, Norshakirah Abdullah, Mohd Hafizul Afifi Osman, Nurul Aida Musa, Muhamad Nabil Akhir, Emelia Akashah Patah |
author_facet |
Aziz, Norshakirah Abdullah, Mohd Hafizul Afifi Osman, Nurul Aida Musa, Muhamad Nabil Akhir, Emelia Akashah Patah |
author_sort |
Aziz, Norshakirah |
title |
Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
title_short |
Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
title_full |
Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
title_fullStr |
Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
title_full_unstemmed |
Predictive Analytics for Oil and Gas Asset Maintenance Using XGBoost Algorithm |
title_sort |
predictive analytics for oil and gas asset maintenance using xgboost algorithm |
publisher |
Springer International Publishing |
publishDate |
2023 |
url |
http://utpedia.utp.edu.my/id/eprint/24025/ |
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1778164432483909632 |
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13.214268 |