Efficient parameter estimation for a methane hydrate model with active subspaces
Mario Teixeira Parente, Steven Mattis, Shubhangi Gupta, Christian, Deusner, Barbara Wohlmuth

TL;DR
This paper introduces an efficient Bayesian parameter estimation method for methane hydrate models by leveraging active subspaces to reduce dimensionality, enabling faster and more accurate inference from experimental data.
Contribution
The paper applies active subspaces to methane hydrate modeling, creating surrogate models that significantly improve the efficiency of Bayesian inference in high-dimensional parameter spaces.
Findings
Active subspaces effectively identify low-dimensional structures in the parameter space.
Surrogate models enable faster Bayesian inference with comparable accuracy.
Posterior densities align well with experimental data.
Abstract
Methane gas hydrates have increasingly become a topic of interest because of their potential as a future energy resource. There are significant economical and environmental risks associated with extraction from hydrate reservoirs, so a variety of multiphysics models have been developed to analyze prospective risks and benefits. These models generally have a large number of empirical parameters which are not known a priori. Traditional optimization-based parameter estimation frameworks may be ill-posed or computationally prohibitive. Bayesian inference methods have increasingly been found effective for estimating parameters in complex geophysical systems. These methods often are not viable in cases of computationally expensive models and high-dimensional parameter spaces. Recently, methods have been developed to effectively reduce the dimension of Bayesian inverse problems by identifying…
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