2024
DOI: 10.1051/m2an/2023089
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A relaxed localized trust-region reduced basis approach for optimization of multiscale problems

Tim Keil,
Mario Ohlberger

Abstract: In this contribution, we are concerned with parameter optimization problems that are constrained by multiscale PDE state equations. As an efficient numerical solution approach for such problems, we introduce and analyze a new relaxed and localized trust-region reduced basis method. Localization is obtained based on a Petrov-Galerkin localized orthogonal decomposition method and its recently introduced two-scale reduced basis approximation. We derive efficient localizable a posteriori error estimates for the op… Show more

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