Application of artificial intelligence methods for identifying and predicting complications in the construction of oil and gas wells: problems and solutions

Author:

Chernikov Alexander D.1,Eremin Nikolay A.2,Stolyarov Vladimir E.3,Sboev Alexander G.4,Semenova-Chashchina Olga K.1,Fitsner Leonid K.1

Affiliation:

1. Oil and Gas Research Institute of the Russian Academy of Sciences

2. Oil and Gas Research Institute of the Russian Academy of Sciences; Professor, National University of Oil and Gas «Gubkin University» (Gubkin University)

3. Institute of Oil and Gas Problems of the Russian Academy of Sciences

4. National Research Center «Kurchatov Institute»

Abstract

This paper poses and solves the problem of using artificial intelligence methods for processing large volumes of geodata from geological and technological measurement stations in order to identify and predict complications during well drilling. Digital modernization of the life cycle of wells using artificial intelligence methods, in particular, helps to improve the efficiency of drilling oil and gas wells. In the course of creating and training artificial neural networks, regularities were modeled with a given accuracy, hidden relationships between geological and geophysical, technical and technological parameters were revealed. The clustering of multidimensional data volumes from various types of sensors used to measure parameters during well drilling has been carried out. Artificial intelligence classification models have been developed to predict the operational results of the well construction. The analysis of these issues is carried out, and the main directions for their solution are determined.

Funder

Ministry of Science and Higher Education of the Russian Federation

Publisher

Georesursy

Subject

Geology,Geophysics

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