Heuristic algorithms for design of integrated monitoring of geologic carbon storage sites

IF 4.6 3区 工程技术 Q2 ENERGY & FUELS International Journal of Greenhouse Gas Control Pub Date : 2024-05-22 DOI:10.1016/j.ijggc.2024.104157
Alexander C. Hanna , Jonathan Whiting , Brian Huang , Delphine Appriou , Xianjin Yang , Julia de Toledo Camargo , Seunghwan Baek , Diana Bacon , Catherine Yonkofski
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Abstract

Designs for Risk Evaluation and Management (DREAM) is a tool developed under the National Risk Assessment Partnership (NRAP) to enhance geologic carbon storage safety and efficiency. Using potential leakage scenarios generated externally by the users preferred history-matching approach, DREAM constructs ideal combinations of sensor locations in the right place at the right time to detect as many leaks as possible, detect them as early as possible, and minimize cost. This user-friendly tool, developed in Java, features a window-based GUI for input and a 3D visualization tool for viewing the domain space and optimized monitoring plans. DREAM's latest version accommodates real-world usage by allowing for joint optimization of wellbore point sensor placements and surface geophysics survey geometries, and by using more efficient multi-objective optimization algorithms. In an example shown here, these two improvements combined allow us to support containment assurance and go from detecting 80–90 % of the potential CO2 leakage to +99.7 %, a step-change improvement that can make the deciding difference in whether a site is suitable for geologic carbon storage. Though developed for geologic carbon storage, this tool would be equally applicable in many surface or offshore environmental monitoring projects.

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地质碳储存地综合监测设计的启发式算法
风险评估和管理设计(DREAM)是国家风险评估合作计划(NRAP)开发的一种工具,旨在提高地质碳封存的安全性和效率。DREAM 利用用户偏好的历史匹配方法从外部生成的潜在泄漏情景,构建出传感器位置的理想组合,在正确的时间、正确的地点检测到尽可能多的泄漏,尽早检测到泄漏,并最大限度地降低成本。这款用户友好型工具采用 Java 语言开发,具有基于窗口的图形用户界面(GUI)和三维可视化工具,前者用于输入,后者用于查看域空间和优化的监测计划。DREAM 的最新版本允许对井筒点传感器位置和地表地球物理勘测几何形状进行联合优化,并采用了更高效的多目标优化算法,从而满足了实际应用的需要。在这里展示的一个例子中,这两项改进结合在一起,使我们能够支持密封性保证,从探测到 80-90% 的潜在二氧化碳泄漏提高到 +99.7%,这种阶跃式的改进可以决定一个地点是否适合进行地质碳封存。虽然该工具是为地质碳封存开发的,但它同样适用于许多地面或近海环境监测项目。
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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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