An uncertainty-aware Digital Shadow for underground multimodal CO2 storage monitoring
Abhinav Prakash Gahlot, Rafael Orozco, Ziyi Yin, Felix J. Herrmann

TL;DR
This paper introduces an uncertainty-aware Digital Shadow framework for monitoring underground CO2 storage, combining Bayesian inference, simulation-based inference, and ensemble filtering to quantify uncertainties in complex geological systems.
Contribution
It presents the first proof of concept of a scalable Digital Shadow for underground CO2 storage monitoring using a novel Bayesian data-assimilation approach.
Findings
Uncertainty quantification improves with permeability field knowledge.
The framework effectively assimilates multi-modal time-lapse data.
The approach handles nonlinear, multi-physics, non-Gaussian problems.
Abstract
Geological Carbon Storage GCS is arguably the only scalable net-negative CO2 emission technology available While promising subsurface complexities and heterogeneity of reservoir properties demand a systematic approach to quantify uncertainty when optimizing production and mitigating storage risks which include assurances of Containment and Conformance of injected supercritical CO2 As a first step towards the design and implementation of a Digital Twin for monitoring underground storage operations a machine learning based data-assimilation framework is introduced and validated on carefully designed realistic numerical simulations As our implementation is based on Bayesian inference but does not yet support control and decision-making we coin our approach an uncertainty-aware Digital Shadow To characterize the posterior distribution for the state of CO2 plumes conditioned on multi-modal…
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