The Bayesian Finite Element Method in Inverse Problems

A Critical Comparison between Probabilistic Models for Discretization Error

Journal Article (2026)
Author(s)

Anne Poot (TU Delft - Civil Engineering & Geosciences)

Iuri Rocha (TU Delft - Civil Engineering & Geosciences)

Pierre Kerfriden (PSL University)

Frans van der Meer (TU Delft - Civil Engineering & Geosciences)

Research Group
Applied Mechanics
DOI related publication
https://doi.org/10.1137/25M1765481 Final published version
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Publication Year
2026
Language
English
Research Group
Applied Mechanics
Journal title
SIAM-ASA Journal on Uncertainty Quantification
Issue number
2
Volume number
14
Pages (from-to)
287-312
Downloads counter
20
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Abstract

When using the finite element method (FEM) in inverse problems, its discretization error can produce parameter estimates that are inaccurate and overconfident. The Bayesian finite element method (BFEM) provides a probabilistic model for the epistemic uncertainty due to discretization error. In this work, we apply BFEM to various inverse problems and compare its performance to the random mesh finite element method (RM-FEM) and the statistical finite element method (statFEM), which serve as a frequentist and inference-based counterpart to BFEM. We find that by propagating this uncertainty to the posterior, BFEM can produce more accurate parameter estimates and prevent overconfidence compared to FEM. Because the BFEM covariance operator is designed to leave uncertainty only in the appropriate space, orthogonal to the FEM basis, BFEM is able to outperform RM-FEM, which does not have such a structure to its covariance. Although it is also possible to use a model misspecification formulation such as statFEM to infer the discretization error downstream rather than model it at the source, the feasibility of such an approach is contingent on the availability of sufficient data. We find that the BFEM is the most robust way to consistently propagate uncertainty due to discretization error to the posterior of a Bayesian inverse problem.

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