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Filter based methods for statistical linear inverse problems

Iglesias, Marco; Lin, Kui; Shuai, Lu; Stuart, Andrew M.

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Authors

Kui Lin

Lu Shuai

Andrew M. Stuart



Abstract

Ill-posed inverse problems are ubiquitous in applications. Understanding of algorithms for their solution has been greatly enhanced by a deep understanding of the linear inverse problem. In the applied communities ensemble-based filtering methods have recently been used to solve inverse problems by introducing an artificial dynamical system. This opens up the possibility of using a range of other filtering methods, such as 3DVAR and Kalman based methods, to solve inverse problems, again by introducing an artificial dynamical system. The aim of this paper is to analyze such methods in the context of the linear inverse problem.

Statistical linear inverse problems are studied in the sense that the observational noise is assumed to be derived via realization of a Gaussian random variable. We investigate the asymptotic behavior of filter based methods for these inverse problems. Rigorous convergence rates are established for 3DVAR and for the Kalman filters, including minimax rates in some instances. Blowup of 3DVAR and a variant of its basic form is also presented, and optimality of the Kalman filter is discussed. These analyses reveal a close connection between (iterated) regularization schemes in deterministic inverse problems and filter based methods in data assimilation. Numerical experiments are presented to illustrate the theory.

Citation

Iglesias, M., Lin, K., Shuai, L., & Stuart, A. M. (2017). Filter based methods for statistical linear inverse problems. Communications in Mathematical Sciences, 15(7), 1867–1896. https://doi.org/10.4310/CMS.2017.v15.n7.a4

Journal Article Type Article
Acceptance Date May 6, 2017
Online Publication Date Oct 16, 2017
Publication Date Oct 16, 2017
Deposit Date Sep 25, 2017
Publicly Available Date Oct 16, 2017
Journal Communications in Mathematical Sciences
Print ISSN 1539-6746
Electronic ISSN 1945-0796
Publisher International Press
Peer Reviewed Peer Reviewed
Volume 15
Issue 7
Pages 1867–1896
DOI https://doi.org/10.4310/CMS.2017.v15.n7.a4
Keywords Kalman filter, 3DVAR, Statistical inverse problems, Artificial dynamics
Public URL https://nottingham-repository.worktribe.com/output/859499
Publisher URL http://dx.doi.org/10.4310/CMS.2017.v15.n7.a4
Contract Date Sep 25, 2017

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