2021
DOI: 10.48550/arxiv.2103.01804
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Oil and Gas Reservoirs Parameters Analysis Using Mixed Learning of Bayesian Networks

Abstract: In this paper, a multipurpose Bayesian-based method for data analysis, causal inference and prediction in the sphere of oil and gas reservoir development is considered. This allows analysing parameters of a reservoir, discovery dependencies among parameters (including cause and effects relations), checking for anomalies, prediction of expected values of missing parameters, looking for the closest analogues, and much more. The method is based on extended algorithm MixLearn@BN for structural learning of Bayesian… Show more

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