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Iterated Kalman methodology for inverse problems.

Authors :
Huang, Daniel Zhengyu
Schneider, Tapio
Stuart, Andrew M.
Source :
Journal of Computational Physics. Aug2022, Vol. 463, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

This paper is focused on the optimization approach to the solution of inverse problems. We introduce a stochastic dynamical system in which the parameter-to-data map is embedded, with the goal of employing techniques from nonlinear Kalman filtering to estimate the parameter given the data. The extended Kalman filter (which we refer to as ExKI in the context of inverse problems) can be effective for some inverse problems approached this way, but is impractical when the forward map is not readily differentiable and is given as a black box, and also for high dimensional parameter spaces because of the need to propagate large covariance matrices. Application of ensemble Kalman filters, for example use of the ensemble Kalman inversion (EKI) algorithm, has emerged as a useful tool which overcomes both of these issues: it is derivative free and works with a low-rank covariance approximation formed from the ensemble. In this paper, we work with the ExKI, EKI, and a variant on EKI which we term unscented Kalman inversion (UKI). The paper contains two main contributions. Firstly, we identify a novel stochastic dynamical system in which the parameter-to-data map is embedded. We present theory in the linear case to show exponential convergence of the mean of the filtering distribution to the solution of a regularized least squares problem. This is in contrast to previous work in which the EKI has been employed where the dynamical system used leads to algebraic convergence to an unregularized problem. Secondly, we show that the application of the UKI to this novel stochastic dynamical system yields improved inversion results, in comparison with the application of EKI to the same novel stochastic dynamical system. The numerical experiments include proof-of-concept linear examples and various applied nonlinear inverse problems: learning of permeability parameters in subsurface flow; learning the damage field from structure deformation; learning the Navier-Stokes initial condition from solution data at positive times; learning subgrid-scale parameters in a general circulation model (GCM) from time-averaged statistics. • A filtering-based method for inverse problems with novel stochastic dynamical systems. • Derive extended, ensemble, and unscented Kalman inversions for inverse problems. • The method induces a form of Tikhonov regularization to overcome ill-posedness. • Prove that the method features exponential convergence for linear inverse problems. • Test on 8 inverse problems, including calibrating a 3D climate model. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00219991
Volume :
463
Database :
Academic Search Index
Journal :
Journal of Computational Physics
Publication Type :
Academic Journal
Accession number :
157183909
Full Text :
https://doi.org/10.1016/j.jcp.2022.111262