2023
DOI: 10.3389/frai.2023.1243584
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XGSleeve: detecting sleeve incidents in well completion by using XGBoost classifier

Sahand Somi,
Sheikh Jubair,
David Cooper
et al.

Abstract: The sliding sleeve holds a pivotal role in regulating fluid flow during hydraulic fracturing within shale oil extraction processes. However, concerns persist surrounding its reliability due to repeated attempts at opening the sleeve, resulting in process inefficiencies. While downhole cameras can verify sleeve states, their high cost poses a limitation. This study proposes an alternative approach, leveraging downhole data analysis for sleeve incident detection in lieu of cameras. This study introduces “XGSleev… Show more

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“…In 2022, Kumar et al automatically detected and described homogeneous reservoirs with an accuracy rate of more than 79% with artificial neural networks and evolutionary algorithms. In 2023, Somi et al amalgamated hidden Markov model-based clustering with XGBoost to identify sleeve incidents [40]. In 2024, Khaled et al reliably predicted bottom-hole circulating temperature under constant conditions with XGBoost [41].…”
Section: Introductionmentioning
confidence: 99%
“…In 2022, Kumar et al automatically detected and described homogeneous reservoirs with an accuracy rate of more than 79% with artificial neural networks and evolutionary algorithms. In 2023, Somi et al amalgamated hidden Markov model-based clustering with XGBoost to identify sleeve incidents [40]. In 2024, Khaled et al reliably predicted bottom-hole circulating temperature under constant conditions with XGBoost [41].…”
Section: Introductionmentioning
confidence: 99%