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Optimization-Based Parametric Model Order Reduction Via H2L2 First-Order Necessary Conditions

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Date

2022-06-16

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SIAM Publications

Abstract

In this paper, we generalize existing frameworks for H2 ⊗ L2-optimal model order reduction to a broad class of parametric linear time-invariant systems. To this end, we derive first-order necessary optimality conditions for a class of structured reduced-order models and then, building on those, propose a stability-preserving optimization-based method for computing locally H2 ⊗ L2-optimal reduced-order models. We also make a theoretical comparison to existing approaches in the literature and, in numerical experiments, show how our new method, with reasonable computational effort, produces stable optimized reduced-order models with significantly lower approximation errors.

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Keywords

parametric MOR, Wilson conditions, H2xL2 gradient, optimization-derived ROMs

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