基于深度学习的代理模型预测高非均质天然裂缝储层的CO2饱和度前沿:离散裂缝网络方法

Zeeshan Tariq, Zhen Xu, Manojkumar Gudala, B. Yan, Shuyu Sun
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引用次数: 0

摘要

天然裂缝性储层(NFRs),如裂缝性碳酸盐岩储层,在世界范围内普遍存在,是潜在的较长时间储存二氧化碳(CO2)的良好来源。模拟模型是评估地下储层中co2 -盐水相互作用的潜力和理解其物理特性的重要工具。由于多种原因,如岩石的高度裂缝性和非均质性、裂缝网络中CO2羽流的快速传播以及基质和裂缝之间的高毛细管对比,模拟NFR油藏在CO2作用下的流体流动行为的计算成本很高。本文提出了一种数据驱动的深度学习代理建模方法,该方法可以准确有效地捕获NFRs地质碳封存(GCS)作业注入和注入后监测期间二氧化碳饱和度羽流的时空动态。建立了基于物理的数值模拟模型,模拟了天然裂缝深层含盐含水层的CO2注入过程。开发了一个独立的软件包,将离散裂缝网络耦合到一个全成分数值模拟模型中。然后使用Latin-Hypercube方法对储层模型进行采样,以考虑广泛的岩石物理、地质、储层和操作参数。模拟模型参数来源于大量已发表的地质调查文献。这些样本生成了一个庞大的物理信息数据库(大约900个模拟),为深度学习代理模型提供了足够的训练数据集。采用平均绝对百分比误差(AAPE)和决定系数(R2)作为误差指标来评价代理模型的性能。开发的工作流表现出优异的性能,在基本事实和状态变量预测之间的AAPE小于5%,R2大于0.95。所提出的深度学习框架提供了一种创新的方法来跟踪裂缝性碳酸盐岩储层中的二氧化碳羽流,并可作为快速评估工具来评估裂缝性碳酸盐岩介质中二氧化碳运动的长期可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-Learning-Based Surrogate Model to Predict CO2 Saturation Front in Highly Heterogeneous Naturally Fractured Reservoirs: A Discrete Fracture Network Approach
Naturally fractured reservoirs (NFRs), such as fractured carbonate reservoirs, are ubiquitous across the worldwide and are potentially very good source to store carbondioxide (CO2) for a longer period of time. The simulation models are great tool to assess the potential and understanding the physics behind CO2-brine interaction in subsurface reservoirs. Simulating the behavior of fluid flow in NFR reservoirs during CO2 are computationally expensive because of the multiple reasons such as highly-fractured and heterogeneous nature of the rock, fast propagation of CO2 plume in the fracture network, and high capillary contrast between matrix and fractures. This paper presents a data-driven deep learning surrogate modeling approach that can accurately and efficiently capture the temporal-spatial dynamics of CO2 saturation plumes during injection and post-injection monitoring periods of Geological Carbon Sequestration (GCS) operations in NFRs. We have built a physics-based numerical simulation model to simulate the process of CO2 injection in a naturally fractured deep saline aquifers. A standalone package was developed to couple the discrete fracture network in a fully compositional numerical simulation model. Then reservoir model was sampled using the Latin-Hypercube approach to account for a wide range of petrophysical, geological, reservoir, and operational parameters. The simulation model parameters were obtained from extensive geological surveys published in literature. These samples generated a massive physics-informed database (about 900 simulations) that provides sufficient training dataset for the Deep Learning surrogate models. Average Absolute Percentage Error (AAPE) and coefficient of determination (R2) were used as error metrics to evaluate the performance of the surrogate models. The developed workflow showed superior performance by giving AAPE less than 5% and R2 more than 0.95 between ground truth and predictions of the state variables. The proposed Deep Learning framework provides an innovative approach to track CO2 plume in a fractured carbonate reservoir and can be used as a quick assessment tool to evaluate the long term feasibility of CO2 movement in fractured carbonate medium.
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