Estimation of the Robin coefficient field in a Poisson problem with uncertain conductivity field
Ruanui Nicholson, Noemi Petra, Jari Kaipio

TL;DR
This paper develops a Bayesian framework to estimate Robin boundary coefficients in a Poisson problem with uncertain interior conductivity, accounting for model errors via approximation error modeling and local linearization.
Contribution
It introduces a Bayesian approximation error approach combined with local linearization for uncertainty quantification in Robin coefficient estimation under uncertain conductivity.
Findings
BAE approach yields feasible posterior uncertainty estimates.
Neglecting model errors leads to infeasible uncertainty estimates.
Method is computationally comparable to standard error models.
Abstract
We consider the reconstruction of a heterogeneous coefficient field in a Robin boundary condition on an inaccessible part of the boundary in a Poisson problem with an uncertain (or unknown) inhomogeneous conductivity field in the interior of the domain. To account for model errors that stem from the uncertainty in the conductivity coefficient, we treat the unknown conductivity as a nuisance parameter and carry out approximative premarginalization over it, and invert for the Robin coefficient field only. We approximate the related modelling errors via the Bayesian approximation error (BAE) approach. The uncertainty analysis presented here relies on a local linearization of the parameter-to-observable map at the maximum a posteriori (MAP) estimates, which leads to a normal (Gaussian) approximation of the parameter posterior density. To compute the MAP point we apply an inexact Newton…
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