THE PROBLEM OF THE COMBINED USE OF FILTRATION THEORY AND MACHINE LEARNING ELEMENTS FOR SOLVING THE INVERSE PROBLEM OF RESTORING THE HYDRAULIC CONDUCTIVITY OF AN OIL FIELD

Author:

KOSYAKOV Vitaly P.1,LEGOSTAEV Dmitry Yu.1,Musakaev Emil N.1

Affiliation:

1. Tyumen Branch of the Khristianovich Institute of Theoretical and Applied Mechanics of the Siberian Branch of the Russian Academy of Sciences

Abstract

This article presents the methodology involving the combined use of machine learning elements and a physically meaningful filtration model. The authors propose using a network of radial basis functions for solving the problem of restoring hydraulic conductivity in the interwell space for an oil field. The advantage of the proposed approach in comparison with classical interpolation methods as applied to the problems of reconstructing the filtration-capacitive properties of the interwell space is shown. The paper considers an algorithm for the interaction of machine learning methods, a filtration model, a mechanism for separating input data, a form of a general objective function, which includes physical and expert constraints. The research was carried out on the example of a symmetrical element of an oil field. The proposed procedure for finding a solution includes solving a direct and an adjoint problem.

Funder

Russian Foundation for Basic Research

Publisher

Tyumen State University

Reference10 articles.

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2. Zakirov I. S. 2006. Development of the Theory and Practice of Oil Field Development. Moscow, Izhevsk: Institute of Computer Technologies. 356 pp. [In Russian]

3. Rozhenko A. I., 2018. Comparison of Radial Basis Functions. Sibirskiy zhurnal vychislitelnoy matematiki, vol. 21, no. 3, pp. 273-292. DOI: 10.15372/SJNM20180304 [In Russian]

4. Broomhead D. H., Lowe D. 1988. “Multivariable functional interpolation and adaptive networks”. Complex Systems: Journal, vol. 2, pp. 321-355.

5. Ertekin T., Sun Q. 2019. “Artificial intelligence applications in reservoir engineering: a status check”. Energies, vol. 12, art. 2897.

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