4.6 Article

A statistical framework for domain shape estimation in Stokes flows

Journal

INVERSE PROBLEMS
Volume 39, Issue 8, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6420/acdd8e

Keywords

boundary shape estimation; Stokes flow; Bayesian statistical inversion; Markov chain Monte Carlo (MCMC); preconditioned Crank-Nicolson (pCN) algorithm

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We propose and implement a Bayesian approach to estimate the shape of a two-dimensional annular domain enclosing a Stokes flow from sparse and noisy fluid observations. The method provides estimates of uncertainty in the shape due to non-invertibility of the forward map and measurement error. We demonstrate the viability of our framework on three test problems.
We develop and implement a Bayesian approach for the estimation of the shape of a two dimensional annular domain enclosing a Stokes flow from sparse and noisy observations of the enclosed fluid. Our setup includes the case of direct observations of the flow field as well as the measurement of concentrations of a solute passively advected by and diffusing within the flow. Adopting a statistical approach provides estimates of uncertainty in the shape due both to the non-invertibility of the forward map and to error in the measurements. When the shape represents a design problem of attempting to match desired target outcomes, this 'uncertainty' can be interpreted as identifying remaining degrees of freedom available to the designer. We demonstrate the viability of our framework on three concrete test problems. These problems illustrate the promise of our framework for applications while providing a collection of test cases for recently developed Markov chain Monte Carlo algorithms designed to resolve infinite-dimensional statistical quantities.

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