SPE/IATMI Asia Pacific Oil &Amp; Gas Conference and Exhibition 2021
DOI: 10.2118/205720-ms
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A Thorough Review of Machine Learning Applications in Oil and Gas Industry

Abstract: Reservoir engineering constitutes a major part of the studies regarding oil and gas exploration and production. Reservoir engineering has various duties, including conducting experiments, constructing appropriate models, characterization, and forecasting reservoir dynamics. However, traditional engineering approaches started to face challenges as the number of raw field data increases. It pushed the researchers to use more powerful tools for data classification, cleaning and preparing data to be used in models… Show more

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Cited by 11 publications
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“…These methods listed in the table can perform better when they are applied in the appropriate scenarios of petroleum development. From Table 4, it is evident that the most popular methods in these domains are still traditional machine learning methods such as DT, logistic regression, SVM, RF, ANNs, and fuzzy logic [58,59]. However, new machine learning methods based on deep learning have started to attract more attention.…”
Section: The Trend Of Machine Learning In Petroleum Engineeringmentioning
confidence: 99%
“…These methods listed in the table can perform better when they are applied in the appropriate scenarios of petroleum development. From Table 4, it is evident that the most popular methods in these domains are still traditional machine learning methods such as DT, logistic regression, SVM, RF, ANNs, and fuzzy logic [58,59]. However, new machine learning methods based on deep learning have started to attract more attention.…”
Section: The Trend Of Machine Learning In Petroleum Engineeringmentioning
confidence: 99%