Parameter identification for elliptic boundary value problems: an abstract framework and applications

2022-05-26 | journal article; research paper. A publication with affiliation to the University of Göttingen.

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​Parameter identification for elliptic boundary value problems: an abstract framework and applications​
Hoffmann, H.; Wald, A.   & Nguyen, T. T. N.​ (2022) 
Inverse Problems38(7).​ DOI: https://doi.org/10.1088/1361-6420/ac6d02 

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Authors
Hoffmann, Heiko; Wald, Anne ; Nguyen, Tram Thi Ngoc
Abstract
AbstractParameter identification problems for partial differential equations are an important subclass of inverse problems. The parameter-to-state map, which maps the parameter of interest to the respective solution of the PDE or state of the system, plays the central role in the (usually nonlinear) forward operator. Consequently, one is interested in well-definedness and further analytic properties such as continuity and differentiability of this operator w.r.t. the parameter in order to make sure that techniques from inverse problems theory may be successfully applied to solve the inverse problem. In this work, we present a general functional analytic framework suited for the study of a huge class of parameter identification problems including a variety of elliptic boundary value problems with Dirichlet, Neumann, Robin or mixed boundary conditions in Hilbert and Banach spaces and possibly complex-valued parameters. In particular, we show that the corresponding parameter-to-state operators fulfill, under suitable conditions, the tangential cone condition, which is often postulated for numerical solution techniques. This framework particularly covers the inverse medium problem and an inverse problem that arises in terahertz tomography.
Issue Date
26-May-2022
Journal
Inverse Problems 
Organization
Institut für Numerische und Angewandte Mathematik 
Working Group
RG Wald (Applied Mathematics in the Natural Sciences) 
ISSN
0266-5611
eISSN
1361-6420
Language
English

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