2022
DOI: 10.21203/rs.3.rs-1782030/v1
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Physics-informed machine learning with differentiable programming for heterogeneous underground reservoir pressure management

Abstract: Avoiding over-pressurization in subsurface reservoirs is critical for applications like CO2 sequestration and wastewater injection. Managing the pressures by controlling injection/extraction are challenging because of complex heterogeneity in the subsurface. The heterogeneity typically requires high-fidelity physics-based models to make predictions on CO2 fate. Furthermore, characterizing the heterogeneity accurately is fraught with parametric uncertainty. Accounting for both, heterogeneity and uncertainty, ma… Show more

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