Spatiotemporal shapley value-based pressure signal decomposition for enhanced geological carbon sequestration monitoring under uncertainty

IF 5.2 3区 工程技术 Q2 ENERGY & FUELS
Jose L. Hernandez-Mejia , Michael J. Pyrcz
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引用次数: 0

Abstract

Geological Carbon Sequestration (GCS) involves capturing CO2 from anthropogenic sources, such as power plants and industrial processes, and injecting it into geological formations for permanent storage. Monitoring subsurface CO2 migration is essential to ensure that the injected CO2 remains safely sequestered and does not leak into the atmosphere. Pressure sensing, in particular, is a cost-effective and efficient method for monitoring large pore networks and detecting changes in subsurface conditions. However, the presence of multiple CO2 injector wells operating under distinct conditions, such as varying injection rates, well locations, and completion designs, complicates the pressure response observed in monitoring wells. This complexity makes it challenging to accurately track individual CO2 plumes originating from specific injector wells. Understanding the pressure dynamics is crucial for ensuring the integrity of the storage site and optimizing injection strategies. To address this challenge, this study proposes a comprehensive workflow for bottomhole pressure (BHP) decomposition. We utilize Shapley values, combined with geostatistical modeling and numerical flow simulation, to determine the individual pressure contributions from each injector well to the monitoring wells. By discretizing Shapley values in both time and space for a given subsurface model, we calculate the marginal pressure contributions of injector wells while accounting for interaction effects, spatial context, and time-varying operational conditions. This approach enhances the accuracy and reliability of GCS monitoring. Additionally, partial dependency plots are created to evaluate the pressure dynamics between injectors and monitor BHP over time, providing valuable insights into the behavior of the storage reservoir.
不确定条件下基于shapley值的时空压力信号分解强化地质固碳监测
地质碳封存(GCS)涉及从发电厂和工业过程等人为来源捕获二氧化碳,并将其注入地质构造中永久储存。监测地下二氧化碳的迁移对于确保注入的二氧化碳保持安全隔离,不泄漏到大气中至关重要。压力传感是监测大孔隙网络和探测地下条件变化的一种经济有效的方法。然而,由于多口CO2注入井在不同的注入速率、井位和完井设计等条件下运行,使得监测井的压力响应变得复杂。这种复杂性使得准确跟踪来自特定注入井的单个二氧化碳羽流具有挑战性。了解压力动态对于确保储层的完整性和优化注入策略至关重要。为了应对这一挑战,本研究提出了一套全面的井底压力(BHP)分解工作流程。我们利用Shapley值,结合地质统计建模和数值流动模拟,来确定每口注入井对监测井的压力贡献。对于给定的地下模型,通过离散时间和空间上的Shapley值,我们计算了注入井的边际压力贡献,同时考虑了相互作用效应、空间环境和时变的操作条件。该方法提高了GCS监测的准确性和可靠性。此外,还创建了部分依赖关系图,以评估注入器之间的压力动态,并监测一段时间内的BHP,为了解储层的行为提供有价值的见解。
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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来源期刊
CiteScore
9.20
自引率
10.30%
发文量
199
审稿时长
4.8 months
期刊介绍: The International Journal of Greenhouse Gas Control is a peer reviewed journal focusing on scientific and engineering developments in greenhouse gas control through capture and storage at large stationary emitters in the power sector and in other major resource, manufacturing and production industries. The Journal covers all greenhouse gas emissions within the power and industrial sectors, and comprises both technical and non-technical related literature in one volume. Original research, review and comments papers are included.
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