Physics-informed machine learning for fault-leakage reduced-order modeling.
In: International Journal of Greenhouse Gas Control, Jg. 125 (2023-05-01), S. N.PAG
academicJournal
Zugriff:
Geologic carbon storage (GCS) is a promising technology for mitigating CO 2 emissions. The overall success of GCS depends on safe operations that are informed by risk assessment and have proper mitigation plans in place. Performing quantitative probabilistic risk assessment for a GCS site using traditional reservoir simulators can be challenging due to the high computational costs. To overcome this challenge, the US Department of Energy's National Risk Assessment Partnership (NRAP) project has developed an integrated assessment modeling approach that utilizes computationally efficient reduced-order models (ROM) for simulating various parts of a GCS storage site to quantify uncertainty. In this study, we develop a reduced-order model for fault leakage risk assessment. We use a deep learning approach to build the reduced-order model. We perform a sensitivity analysis and find that the deep learning model yields high accuracy with a much smaller computational cost than full-physics simulation. We also evaluate the performance of the model in scenarios where simulations are not possible to run, providing analysis not previously performed in fault-leakage ROM analyses. Based on a sensitivity analysis of the model, we suggest a simplified conceptual model for fault leakage and site monitoring. • Reduced-order model (ROM) to estimate brine and CO2 leakage rates through a fault • Multiple imputation using stochastic regression for hard-to-simulate input parameters • Leakage rate estimation by ROM is much faster than full-physics simulation • Sensitivity analysis-based simplified conceptual model to estimate fault leakage rates [ABSTRACT FROM AUTHOR]
Titel: |
Physics-informed machine learning for fault-leakage reduced-order modeling.
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Autor/in / Beteiligte Person: | Meguerdijian, Saro ; Pawar, Rajesh J. ; Chen, Bailian ; Gable, Carl W. ; Miller, Terry A. ; Jha, Birendra |
Zeitschrift: | International Journal of Greenhouse Gas Control, Jg. 125 (2023-05-01), S. N.PAG |
Veröffentlichung: | 2023 |
Medientyp: | academicJournal |
ISSN: | 1750-5836 (print) |
DOI: | 10.1016/j.ijggc.2023.103873 |
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