Oil and Gas Reservoirs Parameters Analysis Using Mixed Learning of Bayesian Networks
Irina Deeva, Anna Bubnova, Petr Andriushchenko, Anton Voskresenskiy,, Nikita Bukhanov, Nikolay O. Nikitin, Anna V. Kalyuzhnaya

TL;DR
This paper introduces a mixed learning Bayesian network method for analyzing oil and gas reservoir data, enabling improved prediction, anomaly detection, and causal inference across diverse reservoir datasets.
Contribution
The paper presents an extended algorithm, MixLearn@BN, for structural learning of Bayesian networks that integrates expert knowledge and mixed data types, enhancing reservoir analysis.
Findings
Improved accuracy in missing data prediction.
Enhanced anomaly detection capabilities.
Discovered new geological parameter relationships.
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 networks. Key ideas of MixLearn@BN are following: (1) learning the network structure on homogeneous data subsets, (2) assigning a part of the structure by an expert, and (3) learning the distribution parameters on mixed data (discrete and continuous). Homogeneous data subsets are identified as various groups of reservoirs with similar features (analogues), where similarity measure…
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Taxonomy
MethodsCausal inference
