Lecture: Computational methods for sparse solution of parameter identification...
Master data
Title: | Computational methods for sparse solution of parameter identification problems |
Description: | In this work, we study the inverse problem of recovering an unknown sparse source u from a noisy observation y of its image through a known linear forward operator G. First, we study the source identification problem by considering a TV-norm regularized problem. In this case, our focus is to optimize the placement of measurement points at which data are collected, such that the uncertainty in the estimated parameters is minimized. More precisely, we introduce an optimal design criterion and provide an efficient method for solving the resulting optimization problem. In addition, the mentioned parameter identification problem is also considered in a Bayesian framework. We introduce a prior distribution on the space of Radon measures. Together with some mild assumptions on the forward operator G, we then show the well-posedness of this Bayesian inverse problem. |
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Type: | Guest lecture |
Homepage: | https://www.math.aau.at/talks/142/pdf |
Event: | Doctoral Seminar in Mathematics (Klagenfurt) |
Date: | 07.12.2022 |
lecture status: | stattgefunden (Präsenz) |
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Fakultät für Technische Wissenschaften
Institut für Mathematik
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AT - 9020 Klagenfurt am Wörthersee |
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