Adaptive Localized Reduced Basis Methods for Large Scale Parameterized Systems

03/06/2023
by   Tim Keil, et al.
0

In this contribution, we introduce and numerically evaluate a certified and adaptive localized reduced basis method as a local model in a trust-region optimization method for parameter optimization constrained by partial differential equations.

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