利用基于神经网络算法的地球化学研究定位和开发剩余油储量

IF 0.8 Q3 ENGINEERING, PETROLEUM
Georesursy Pub Date : 2022-12-20 DOI:10.18599/grs.2022.4.4
V. Sudakov, Rinat I. Safuanov, Aleksey N. Kozlov, Timur M. Porivaev, A. Zaikin, Rustam A. Zinykov, A. Lutfullin, Ildar Z. Farhutdinov, Ilgiz Z. Tylyakov
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引用次数: 0

摘要

在油田开发后期,剩余油储量经历了从流动到静止的显著变化。这些储量主要位于技术和生产蚀变、含水层和矿床区域。这种碳氢化合物来源的本地化和开发是提高成熟油田最终采收率的有效方法,因为存在现成的发达的生产、运输和炼油基础设施,以及高素质的人才。本文提出了一种基于神经网络算法,结合储层流体地球化学分析,对多层储层剩余油储量进行体积估算和定位的方法。机器学习算法的使用允许通过自动选择井来有针对性地开发剩余储量。这种方法大大减少了专家处理数据的体力劳动和决策时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization and development of residual oil reserves using geochemical studies based on neural network algorithms
At the late stage of field development, residual oil reserves undergo a significant change from mobile to sedentary and stationary. These reserves are mainly located in technogenically and production altered, watered layers and areas of deposits. Localization and development of such sources of hydrocarbons is an effective method of increasing the final oil recovery factor in mature fields, due to the presence of a ready-made developed infrastructure for production, transportation and refining, as well as the availability of highly qualified personnel. This article considers an approach that allows, based on neural network algorithms, the estimation the volumes and localization of residual oil reserves in multi-layer deposits in combination with the analysis of geochemical studies of reservoir fluids. The use of machine learning algorithms allows a targeted approach to the development of residual reserves by automated selection of wellwork. This approach significantly reduces the manual labor of specialists for data processing and decision-making time.
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来源期刊
Georesursy
Georesursy ENGINEERING, PETROLEUM-
CiteScore
1.50
自引率
25.00%
发文量
49
审稿时长
16 weeks
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