Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering

Relevance. The commissioning of a large number of new fields with limited amount of initial geological and physical data. To fill in the missing data, the selection of object-analogs is carried out. From the correct choice the selected development system will depend. But according to the establishe...

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Main Authors: Alexander V. Karsakov, Pavel N. Zyatikov, Kirill V. Sinebriukhov, Irina V. Sharf
Format: Article
Language:Russian
Published: Tomsk Polytechnic University 2025-01-01
Series:Известия Томского политехнического университета: Инжиниринг георесурсов
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Online Access:https://izvestiya.tpu.ru/archive/article/view/4399
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author Alexander V. Karsakov
Pavel N. Zyatikov
Kirill V. Sinebriukhov
Irina V. Sharf
author_facet Alexander V. Karsakov
Pavel N. Zyatikov
Kirill V. Sinebriukhov
Irina V. Sharf
author_sort Alexander V. Karsakov
collection DOAJ
description Relevance. The commissioning of a large number of new fields with limited amount of initial geological and physical data. To fill in the missing data, the selection of object-analogs is carried out. From the correct choice the selected development system will depend. But according to the established practice, the choice of analogues is carried out only by the expert method, based on the search for the geographically closest objects being developed. The effectiveness of the chosen development strategy depends on the selected analogues, which in their turn will minimize the risks of oil companies during the operation of assets. Aim. Development of an algorithm for qualitatively selection of the best object-analogue of the project field, taking into account the verification of the selected analogues. Methods. Evaluation and analysis of the necessary data to define the degree of similarity of reservoir development by the methods of mathematical statistics and machine learning. Results. The authors describe the problem in the selection of objecvt-analogues and the existing approaches to its solution. The paper introduces the prospects and possibilities of applying the accumulated experience in the developing of new assets and provides an algorithm for the selection of analogues based on a qualitative assessment of geological parameters and quantitative assessment of the degree of similarity of geological and physical characteristics of the object. The results obtained show that the method allows you to quickly find analogues from massive databases, and has a high degree of correlation with the variants of deposits agreed upon by the state expertise for the development of hydrocarbon fields. The authors proposed a way of applying the analogy method to predict the missing data.
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institution Kabale University
issn 2500-1019
2413-1830
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publishDate 2025-01-01
publisher Tomsk Polytechnic University
record_format Article
series Известия Томского политехнического университета: Инжиниринг георесурсов
spelling doaj-art-8934cc1a8cc640d9acc21a7f3b15793d2025-02-08T02:37:52ZrusTomsk Polytechnic UniversityИзвестия Томского политехнического университета: Инжиниринг георесурсов2500-10192413-18302025-01-01336110.18799/24131830/2025/1/4399Improving the selection of object-analogues of oil and gas fields in designing reservoir engineeringAlexander V. KarsakovPavel N. ZyatikovKirill V. Sinebriukhov0Irina V. Sharf1National Research Tomsk Polytechnic UniversityNational Research Tomsk Polytechnic University Relevance. The commissioning of a large number of new fields with limited amount of initial geological and physical data. To fill in the missing data, the selection of object-analogs is carried out. From the correct choice the selected development system will depend. But according to the established practice, the choice of analogues is carried out only by the expert method, based on the search for the geographically closest objects being developed. The effectiveness of the chosen development strategy depends on the selected analogues, which in their turn will minimize the risks of oil companies during the operation of assets. Aim. Development of an algorithm for qualitatively selection of the best object-analogue of the project field, taking into account the verification of the selected analogues. Methods. Evaluation and analysis of the necessary data to define the degree of similarity of reservoir development by the methods of mathematical statistics and machine learning. Results. The authors describe the problem in the selection of objecvt-analogues and the existing approaches to its solution. The paper introduces the prospects and possibilities of applying the accumulated experience in the developing of new assets and provides an algorithm for the selection of analogues based on a qualitative assessment of geological parameters and quantitative assessment of the degree of similarity of geological and physical characteristics of the object. The results obtained show that the method allows you to quickly find analogues from massive databases, and has a high degree of correlation with the variants of deposits agreed upon by the state expertise for the development of hydrocarbon fields. The authors proposed a way of applying the analogy method to predict the missing data. https://izvestiya.tpu.ru/archive/article/view/4399object-analoguereservoir engineeringjustification of development systemsmachine learningverification of analogues
spellingShingle Alexander V. Karsakov
Pavel N. Zyatikov
Kirill V. Sinebriukhov
Irina V. Sharf
Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
Известия Томского политехнического университета: Инжиниринг георесурсов
object-analogue
reservoir engineering
justification of development systems
machine learning
verification of analogues
title Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
title_full Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
title_fullStr Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
title_full_unstemmed Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
title_short Improving the selection of object-analogues of oil and gas fields in designing reservoir engineering
title_sort improving the selection of object analogues of oil and gas fields in designing reservoir engineering
topic object-analogue
reservoir engineering
justification of development systems
machine learning
verification of analogues
url https://izvestiya.tpu.ru/archive/article/view/4399
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