Modeling CO2 Geologic Storage Using Machine Learning

A. Alali
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Abstract

Over the upcoming years, storing CO2 into geological formations would contribute significantly to the international efforts to address climate challenges due to greenhouse gas emissions. Carbon Capture and Storage (CCS) projects require immense capital investments to complete multiple phases, namely careful site selection, planning, design, and execution. Modeling of surface and subsurface CO2 flow plays a major role not only in design optimization but also in site screening and capacity estimation. This study focuses on modeling multiphase flow of CO2 in underground formations with particular emphasis on the fraction of the CO2 injected that can be trapped. Key interest is given to a trapping mechanism that can keep CO2 stored for long-term in target formations, namely residual trapping. The main objective of this work is to find more efficient ways to proxy model this process with its complex physics. There have been multiple recent reservoir simulator numerical enhancements to model CO2 trapping in CCS accurately. However, these complex enhancements have created computational difficulties when attempting to capture unique CO2 fluid physical and chemical subsurface processes such as relative permeability hysteresis. Such numerical challenges make the modeling inefficient and computationally expensive. Therefore, this study introduces more-efficient modeling techniques based on machine learning to make simulations more practical and accessible. By generating a sufficiently large training dataset utilizing a computationally-enhanced numerical simulator with a wide range of input parameters including permeability, porosity, etc., a machine learning model was constructed as an alternative to conventional numerical simulation. The effectiveness of the machine-learning models is presented using a test case of a 2D rectangular grid domain of heterogeneous permeability representing a saline aquifer. The goal is to model an injection of CO2 into water under gravity segregation to estimate the fraction of CO2 trapped at the bottom prevented from reaching the top. Even though the training dataset used in this study is relatively small, the machine-learning alternative is able to achieve at least 95% accuracy when tested with new input data in 103 to 104 faster run-times. It is believed that this accuracy can be improved further by increasing the size of the training dataset and exploring other machine-learning models with new hyperparameters. In this study, only a limited number of widely-used techniques is compared, including: Random Forest, K-Nearest Neighbors (KNN), and Multi-Output Regression. Accurately modeling the amount of CO2 that can be trapped during CCS applications is vital as this will dictate the available storage capacity for injected CO2; however, this may be a difficult task for most commercial simulators. This study proposes new ways to model such process with enhanced efficiency compared to existing techniques. As most global efforts are adopting an accelerated strategy towards sustainability, the presented approach is timely and of great importance.
利用机器学习模拟二氧化碳地质储存
在接下来的几年里,将二氧化碳储存到地质构造中将对国际社会应对温室气体排放带来的气候挑战做出重大贡献。碳捕集与封存(CCS)项目需要大量的资本投资来完成多个阶段,即仔细的选址、规划、设计和执行。地表和地下CO2流动建模不仅在设计优化中起着重要作用,而且在场地筛选和容量估算中也起着重要作用。这项研究的重点是模拟地下地层中二氧化碳的多相流动,特别强调注入的二氧化碳可以被捕获的比例。主要关注的是能够将二氧化碳长期储存在目标地层中的捕获机制,即残余捕获。这项工作的主要目标是找到更有效的方法来代理模型这一复杂的物理过程。最近有多个油藏模拟器的数值增强来准确模拟CCS中的二氧化碳捕集。然而,当试图捕捉独特的二氧化碳流体物理和化学地下过程(如相对渗透率滞后)时,这些复杂的增强技术给计算带来了困难。这样的数值挑战使得建模效率低,计算成本高。因此,本研究引入了基于机器学习的更有效的建模技术,使模拟更加实用和可访问。通过使用具有广泛输入参数(包括渗透率、孔隙度等)的计算增强数值模拟器生成足够大的训练数据集,构建了机器学习模型,作为传统数值模拟的替代方案。通过一个代表咸水层的非均质渗透率的二维矩形网格域的测试案例,展示了机器学习模型的有效性。目标是模拟在重力分离下向水中注入二氧化碳的情况,以估计被困在底部而无法到达顶部的二氧化碳的比例。尽管本研究中使用的训练数据集相对较小,但当使用新输入数据在103到104个更快的运行时间内进行测试时,机器学习替代方案能够达到至少95%的准确率。相信这种准确性可以通过增加训练数据集的大小和探索其他具有新超参数的机器学习模型来进一步提高。在本研究中,只比较了有限数量的广泛使用的技术,包括:随机森林,k近邻(KNN)和多输出回归。准确模拟CCS应用过程中可以捕获的二氧化碳量至关重要,因为这将决定注入二氧化碳的可用存储容量;然而,对于大多数商业模拟器来说,这可能是一项艰巨的任务。这项研究提出了新的方法来模拟这样的过程,与现有的技术相比,效率更高。由于大多数全球努力正在采取加速可持续战略,因此提出的办法是及时和非常重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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