基于机器学习方法的储层压力再现及其对水力压裂裂缝形成过程的影响研究

IF 2.4 Q2 MINING & MINERAL PROCESSING
Е. Filippov, L. Zakharov, Dmitry Martyushev, I. Ponomareva
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引用次数: 4

摘要

水力压裂是一种有效的增产方法,目前广泛应用于各种条件,包括复杂的碳酸盐岩油藏。在考虑的油田条件下,水力压裂导致了技术效率指标的显著差异,这便于对裂缝形成模式进行详细研究。对于所有受影响的井,采用开发的间接技术对裂缝空间定向进行了评估,并通过地球物理方法验证了其可靠性。在分析过程中发现,在所有情况下,裂缝均向发育体系元区方向发育,其特征是储层压力最大。同时,使用机器学习方法在一个时间点(水力压裂开始时)确定所有井的储层压力值。机器学习方法的可靠性与井流体动力学研究中获得的实际(历史)油藏压力高度收敛。在上述条件下进行水力压裂规划时,应考虑地层压力对压裂模式的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reproduction of reservoir pressure by machine learning methods and study of its influence on the cracks formation process in hydraulic fracturing
Hydraulic fracturing is an effective way to stimulate oil production, which is currently widely used in various conditions, including complex carbonate reservoirs. In the conditions of the considered field, hydraulic fracturing leads to a significant differentiation of technological efficiency indicators, which makes it expedient to study in detail the crack formation patterns. For all affected wells, the assessment of the resulting fractures spatial orientation was performed using the developed indirect technique, the reliability of which was confirmed by geophysical methods. In the course of the analysis, it was found that in all cases the fracture is oriented in the direction of the development system element area, which is characterized by the maximum reservoir pressure. At the same time, reservoir pressure values for all wells were determined at one point in time (at the beginning of hydraulic fracturing) using machine learning methods. The reliability of the used machine learning methods is confirmed by high convergence with the actual (historical) reservoir pressures obtained during hydrodynamic studies of wells. The obtained conclusion about the influence of the formation pressure on the patterns of fracturing should be taken into account when planning hydraulic fracturing in the considered conditions.
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来源期刊
Journal of Mining Institute
Journal of Mining Institute MINING & MINERAL PROCESSING-
CiteScore
7.50
自引率
25.00%
发文量
62
审稿时长
8 weeks
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