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Predicting dynamic formation pressure using artificial intelligence methods

Authors :
Lev А. Zakharov
Dmitry А. Martyushev
Inna N. Ponomareva
Source :
Записки Горного института, Vol 253, Pp 23-32 (2022)
Publication Year :
2022
Publisher :
Saint-Petersburg Mining University, 2022.

Abstract

Determining formation pressure in the well extraction zones is a key task in monitoring the development of hydrocarbon fields. Direct measurements of formation pressure require prolonged well shutdowns, resulting in underproduction and the possibility of technical problems with the subsequent start-up of wells. The impossibility of simultaneous shutdown of all wells of the pool makes it difficult to assess the real energy state of the deposit. This article presents research aimed at developing an indirect method for determining the formation pressure without shutting down the wells for investigation, which enables to determine its value at any time. As a mathematical basis, two artificial intelligence methods are used – multidimensional regression analysis and a neural network. The technique based on the construction of multiple regression equations shows sufficient performance, but high sensitivity to the input data. This technique enables to study the process of formation pressure establishment during different periods of deposit development. Its application is expedient in case of regular actual determinations of indicators used as input data. The technique based on the artificial neural network enables to reliably determine formation pressure even with a minimal set of input data and is implemented as a specially designed software product. The relevant task of continuing the research is to evaluate promising prognostic features of artificial intelligence methods for assessing the energy state of deposits in hydrocarbon extraction zones.

Details

Language :
English, Russian
ISSN :
24113336 and 25419404
Volume :
253
Database :
Directory of Open Access Journals
Journal :
Записки Горного института
Publication Type :
Academic Journal
Accession number :
edsdoj.0cd66b2c8614c2191b2c05f7cbbee5f
Document Type :
article
Full Text :
https://doi.org/10.31897/PMI.2022.11