2023
DOI: 10.1177/09544089231213778
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Enhancing fault diagnosis of undesirable events in oil & gas systems: A machine learning approach with new criteria for stability analysis and classification accuracy

Mohammed Amine Sahraoui,
Chemseddine Rahmoune,
Mohamed Zair
et al.

Abstract: Petroleum serves as a cornerstone of global energy supply, underpinning economic development. Consequently, the effective detection of faults in oil and gas (O&G) wells is of paramount importance. In response to the limitations observed in prior research, this study presents an innovative fault diagnosis system, rooted in machine learning techniques. Our approach encompasses a comprehensive analysis, incorporating stability assessment via standard deviation (STD), and a meticulous evaluation of accuracy an… Show more

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“…The final result is determined by aggregating the values from each tree, often through averaging. This approach finds extensive use in process monitoring applications [484][485][486][487][488][489][490][491][492][493][494][495].…”
mentioning
confidence: 99%
“…The final result is determined by aggregating the values from each tree, often through averaging. This approach finds extensive use in process monitoring applications [484][485][486][487][488][489][490][491][492][493][494][495].…”
mentioning
confidence: 99%