Mario Ohlberger (Uni Münster): Model Order Reduction and learning for PDE Constrained Optimization and Inverse Problems
Wednesday, 20.12.2023 14:15 im Raum M5
In this talk we focus on learning based reduction methods in the context of PDE constrained optimization
and inverse problems and evaluate their overall efficiency.
We discuss learning strategies, such as adaptive enrichment as well as a combination of
reduced order models with machine learning approaches in the contest of time dependent problems.
Concepts of rigorous certification and convergence will be presented, as well as numerical experiments
that demonstrate the efficiency of the proposed approaches.
Angelegt am 16.08.2023 von Besprechungsraum
Geändert am 17.12.2023 von Mario Ohlberger
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