Aug 12 – 16, 2024
Von-Melle-Park 8
Europe/Berlin timezone

Adaptive Trust Region Reduced Basis Methods for Parameter Identification Problems

Aug 13, 2024, 4:30 PM
30m
Seminarraum 206 (Von-Melle-Park 8)

Seminarraum 206

Von-Melle-Park 8

Minisymposium Contribution MS 06: Recent advances in PDE-constrained optimization MS 06: Recent advances in PDE-constrained optimization

Speaker

Michael Kartmann (Uni Konstanz)

Description

In this talk, we are concerned with model order reduction in the context of iterative regularization methods for the solution of inverse problems arising from parameter identification in elliptic partial differential equations. Such methods typically require a large number of forward solutions, which makes the use of the reduced basis method attractive to reduce computational complexity.

However, the considered inverse problems are typically ill-posed due to their infinite-dimensional parameter space. Moreover, the infinite-dimensional parameter space makes it impossible to build and certify classical reduced-order models efficiently in a so-called offline phase. We thus propose a new algorithm that adaptively builds a reduced parameter space in the online phase. The enrichment of the reduced parameter space is naturally inherited from the Tikhonov regularization within an iteratively regularized Gauss-Newton method.

Finally, the adaptive parameter space reduction is combined with a certified reduced basis state space reduction within an adaptive error-aware trust region framework. Numerical experiments are presented to show the efficiency of the combined parameter and state space reduction for
inverse parameter identification problems with distributed reaction or diffusion
coefficients.

Authors

Michael Kartmann (Uni Konstanz) Prof. Mario Ohlberger (Universität Münster) Tim Keil (Universität Münster) Barbara Kaltenbacher (Universität Klagenfurt) Stefan Volkwein (Universität Konstanz)

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