A Surrogate-Assisted Uncertainty-Aware Bayesian Validation Framework and its Application to Coupling Free Flow and Porous-Medium Flow
Farid Mohammadi, Elissa Eggenweiler, Bernd Flemisch, Sergey, Oladyshkin, Iryna Rybak, Martin Schneider, Kilian Weishaupt

TL;DR
This paper introduces a Bayesian validation framework with surrogate modeling to assess coupled free flow and porous-medium flow models, accounting for uncertainties and enabling probabilistic model comparison.
Contribution
It develops a novel uncertainty-aware validation method using Bayesian techniques and surrogate models, applied to coupled flow systems in geoscience.
Findings
Framework effectively quantifies uncertainties and sensitivities.
Enables probabilistic comparison of different coupled flow models.
Accelerates Bayesian calibration with surrogate modeling.
Abstract
Existing model validation studies in geoscience often disregard or partly account for uncertainties in observations, model choices, and input parameters. In this work, we develop a statistical framework that incorporates a probabilistic modeling technique using a fully Bayesian approach to perform a quantitative uncertainty-aware validation. A Bayesian perspective on a validation task yields an optimal bias-variance trade-off against the reference data. It provides an integrative metric for model validation that incorporates parameter and conceptual uncertainty. Additionally, a surrogate modeling technique, namely Bayesian Sparse Polynomial Chaos Expansion, is employed to accelerate the computationally demanding Bayesian calibration and validation. We apply this validation framework to perform a comparative evaluation of models for coupling a free flow with a porous-medium flow. The…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Groundwater flow and contamination studies · Soil Geostatistics and Mapping
