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Abstract

Summary

The article is a description of the practical implementation of studying the hydrophobicity of reservoir rocks. The hydrophobicity of porous geological space significantly affects the permeability of rocks - oil, gas, and water reservoirs. Accordingly, the influence of this parameter should be taken into account when hydrodynamic modeling processes for the development of oil and gas deposits and hydrothermal systems. Determination of the hydrophobicity parameter of rocks is possible on the basis of laboratory or geophysical data. Methods for determining hydrophobicity and principles of data processing are considered, incl. based on matrix factorization and machine learning.

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/content/papers/10.3997/2214-4609.2023520216
2023-11-07
2025-03-17
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