has been cited by the following article(s):
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[1]
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Transforming Offshore Safety: AI-Powered Predictive Risk Mitigation Through Advanced Safety Data Analytics
SPE Offshore Europe Conference & Exhibition,
2025
DOI:10.2118/226785-MS
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[2]
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Advanced Cement Slurry Formulation: Reducing Trial-And-Error Through Machine Learning-Based Optimization
SPE Annual Caspian Technical Conference and Exhibition,
2025
DOI:10.2118/230411-MS
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[3]
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Exploring Modern Feature Extraction Techniques for Improved Offshore Fault Detection in Oil and Gas Operations
SPE Annual Technical Conference and Exhibition,
2025
DOI:10.2118/228061-MS
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[4]
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Anomaly detection in oil-producing wells: a comparative study of one-class classifiers in a multivariate time series dataset
Journal of Petroleum Exploration and Production Technology,
2024
DOI:10.1007/s13202-023-01710-6
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[5]
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Advancing Drilling Safety: Automated Anomaly Detection in Well Control Using Machine Learning Techniques
SPE Nigeria Annual International Conference and Exhibition,
2024
DOI:10.2118/221626-MS
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[6]
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Development of Oilwell Fault Classifiers Using a Wavelet-Based Multivariable Approach in a Modular Architecture
SPE Journal,
2024
DOI:10.2118/221463-PA
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[7]
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Anomaly Detection Using Explainable Random Forest for the Prediction of Undesirable Events in Oil Wells
Applied Computational Intelligence and Soft Computing,
2022
DOI:10.1155/2022/1558381
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