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JOURNALS // Informatsionnye Tekhnologii i Vychslitel'nye Sistemy // Archive

Informatsionnye Tekhnologii i Vychslitel'nye Sistemy, 2022 Issue 2, Pages 84–90 (Mi itvs770)

MATH MODELING

Neural network modeling of the process of maintaining temperature after heating the bituminous reservoir

A. R. Mukhutdinova, M. G. Efimova, Z. R. Vahidovab

a Federal State Budgetary Educational Institution of Higher Education "Kazan National Research Technological University", Kazan, Russia
b Institution of higher education "University of Management "TISBI", Kazan, Russia

Abstract: Currently, thermal methods of treating productive formations are widely used to intensify oil production in existing wells. It is known that one of the main stages of oil production in the development of bituminous formations is thermal treatment, which is carried out by using the thermite composition of the combustible material. Overcoming the low mobility of bituminous oil and increasing the efficiency of the downhole method of reservoir treatment is possible through the use of modern information technologies that have the widest possibilities for modeling such systems. They allow, based on empirical experience alone, to build neural network models that help extract knowledge from data, identify features and actively use them to solve specific practical problems. In this paper, the possibility of neural network modeling of the process of maintaining temperature after heating a bituminous reservoir has been studied and shown. The results of a study of the influence of various factors on the process of maintaining the temperature after heating are presented.

Keywords: artificial neural network, modeling, bituminous reservoir, software module, heating, energized material, distance, mass.

DOI: 10.14357/20718632220209



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© Steklov Math. Inst. of RAS, 2024