Likelihood-Free Inference and Hierarchical Data Assimilation for Geological Carbon Storage
Wenchao Teng, Louis J. Durlofsky

TL;DR
This paper introduces a hierarchical, likelihood-free data assimilation framework using deep learning surrogates for efficient and accurate Bayesian inference of hyperparameters in geological carbon storage, improving computational speed and results.
Contribution
It develops a novel hierarchical data assimilation method combining likelihood-free inference with deep learning surrogates for hyperparameter estimation in CO2 storage.
Findings
SMC-ABC-ESMDA achieves close results to reference methods.
The hierarchical approach speeds up inference by 1-2 orders of magnitude.
The method outperforms standalone ESMDA in hyperparameter and pressure predictions.
Abstract
Data assimilation will be essential for the management and expansion of geological carbon storage operations. In traditional data assimilation approaches a fixed set of geological hyperparameters, such as mean and standard deviation of log-permeability, is often assumed. Such hyperparameters, however, may be highly uncertain in practical CO2 storage applications where measurements are scarce. In this study, we develop a hierarchical data assimilation framework for carbon storage that treats hyperparameters as uncertain variables characterized by hyperprior distributions. To deal with the computationally intractable likelihood function in hyperparameter estimation, we apply a likelihood-free (or simulation-based) inference algorithm, specifically sequential Monte Carlo-based approximate Bayesian computation (SMC-ABC), to draw posterior samples of hyperparameters given dynamic monitoring…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Atmospheric and Environmental Gas Dynamics · Hydrocarbon exploration and reservoir analysis
MethodsSparse Evolutionary Training
