基于原位应力加载 CT 成像和 U-Net 深度学习的深层油气藏多尺度变形介质数字岩石建模

IF 3.7 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Yajie Tian , Daigang Wang , Jing Xia , Yushan Ma , Yu Zhang , Baozhu Li , Haifeng Ding
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引用次数: 0

摘要

深层和超深层油气藏被认为是中国陆上油气勘探和开发的诱人目标。多尺度裂缝在这类储层中分布广泛。流固耦合效应强,对流体流动影响大,导致油气采收率低,平均值小于 15%。要探索深层和超深层油气藏高效开发过程中的潜在流动动力学,研究受强地应力场变化影响的岩石多尺度裂隙孔隙结构演化特征具有重要意义。针对上述问题,我们选取塔里木盆地典型超深油气藏的实际钻探岩石进行了原位应力加载计算机断层扫描(CT)实验,获得了不同动态加载条件下岩石微观结构的CT灰度图像。引入全卷积神经网络(U-Net)深度学习分割算法,准确区分深部岩石的岩石骨架、孔隙空间和裂缝。最终建立了不同动态加载条件下多尺度断裂-多孔介质变形的三维(3-D)数字岩石模型,研究了原位应力逐渐加载时断裂形态和深部岩石微观结构的演化过程。结果表明,U-Net 深度学习语义分割算法能准确分割深部岩石的 CT 图像,建立的断裂多孔介质三维数字岩石模型能准确表达孔喉分布、断裂形态和孔隙尺度拓扑连通性。在应力加载初期,岩石内部的微裂缝较少,裂缝连通性较差。由于岩石压实作用,平均孔隙喉道半径增大,而孔隙喉道比、配位数和迂回度大大降低。随着有效应力的逐渐加载,微裂缝开始扩展,微裂缝分布的异质性增强,拓扑连通性提高,配位数和扭曲度逐渐增大。深部岩石断裂后,微裂缝贯穿断裂网络,上述拓扑参数都会大大增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital rock modeling of deformed multi-scale media in deep hydrocarbon reservoirs based on in-situ stress-loading CT imaging and U-Net deep learning
Deep and ultra-deep hydrocarbon reservoirs are regarded as an attractive target for onshore oil and gas exploration and development in China. The multi-scale fractures are widely distributed in this type of reservoir. The fluid-solid coupling effect is strong, which can greatly affect the fluid flow, resulting in a low hydrocarbon recovery with the average value less than 15%. To explore the underlying flow dynamics during efficient development of deep and ultra-deep hydrocarbon reservoirs, it is of great importance to characterize the multi-scale fracture-pore structure evolution of rock affected by strong geo-stress field variation. To tackle the above issues, an actual rock drilled from a typical ultra-deep reservoir in Tarim Basin are selected to conduct in-situ stress-loading computed tomography (CT) scanning experiments, and the CT gray images of rock microstructure under different dynamic loading conditions are obtained. A fully convolutional neural network (U-Net) deep learning segmentation algorithm is introduced to accurately distinguish the rock skeleton, pore space and fractures in deep rock. The three-dimensional (3-D) digital rock model of deformed multi-scale fracture-porous media under different dynamic loading conditions is ultimately established to investigate the evolution of fracture morphology and deep rock microstructure as the in-situ stress is gradually loaded. It indicates that, the U-Net deep learning semantic segmentation algorithm can accurately segment CT images of deep rocks, and the established 3D digital rock model of fractured porous media can accurately represent the pore-throat distribution, fracture morphology, and pore-scale topological connectivity. At the initial stage of stress loading, there are few micro-fractures inside the rock, and the fracture connectivity is poor. Due to effect of rock compaction, the average pore throat radius increases while pore throat ratio, coordination number and tortuosity greatly decrease. As the effective stress is gradually loaded, the micro-fractures begin to propagate, leading to stronger heterogeneity of micro-fractures’ distribution and better topological connectivity, and both the coordination number and tortuosity gradually increase. After the deep rock is fractured, micro-fractures run through a fracture network and all the above topological parameters increase greatly.
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来源期刊
Marine and Petroleum Geology
Marine and Petroleum Geology 地学-地球科学综合
CiteScore
8.80
自引率
14.30%
发文量
475
审稿时长
63 days
期刊介绍: Marine and Petroleum Geology is the pre-eminent international forum for the exchange of multidisciplinary concepts, interpretations and techniques for all concerned with marine and petroleum geology in industry, government and academia. Rapid bimonthly publication allows early communications of papers or short communications to the geoscience community. Marine and Petroleum Geology is essential reading for geologists, geophysicists and explorationists in industry, government and academia working in the following areas: marine geology; basin analysis and evaluation; organic geochemistry; reserve/resource estimation; seismic stratigraphy; thermal models of basic evolution; sedimentary geology; continental margins; geophysical interpretation; structural geology/tectonics; formation evaluation techniques; well logging.
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