Integration of deep learning fault segmentation, HTI analysis, and ambient microseismic methods to enhance fracture prediction in the Crisol Anticline, Colombia

Roderick Perez Altamar, Menno Wiebe, Andrea Pablos Corredor
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Abstract

This study aimed to optimize hydrocarbon production from the naturally fractured reservoirs in the VMM-1 gas field by identifying and interpreting the fault and fracture systems. To achieve this, deep learning fault segmentation was integrated with HTI analysis and ambient microseismic recording. The fault pattern was studied using deep learning fault segmentation, while HTI analysis highlighted the magnitude and distribution of fractures. Ambient microseismic recording was used to identify active faults and fractures. By integrating these three methods, we were able to understand the direction, density, and effectiveness of the various fracture systems, as well as the lateral extent and continuity of the Rosa Blanca Formation. This integration of methods was essential in maximizing ultimate recovery and economic success and has potential applications in the development of other naturally fractured reservoirs.
整合深度学习断层划分、高温热成像分析和环境微地震方法,加强哥伦比亚克里斯奥尔起伏线的断裂预测
本研究旨在通过识别和解释断层和裂缝系统,优化 VMM-1 气田天然裂缝储层的碳氢化合物生产。为此,将深度学习断层划分与 HTI 分析和环境微地震记录相结合。利用深度学习断层分割对断层模式进行了研究,而 HTI 分析则突出了裂缝的规模和分布。环境微震记录用于识别活动断层和断裂。通过整合这三种方法,我们能够了解各种断裂系统的方向、密度和有效性,以及罗萨-布兰卡地层的横向范围和连续性。这种方法的整合对于最大限度地提高最终采收率和经济效益至关重要,并有可能应用于其他天然裂缝储层的开发。
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