Mesh sampling and weighting for the hyperreduction of nonlinear Petrov-Galerkin reduced-order models with local reduced-order bases
Sebastian Grimberg, Charbel Farhat, Radek Tezaur, Charbel Bou-Mosleh

TL;DR
This paper extends the ECSW hyperreduction method to Petrov-Galerkin reduced-order models with local bases, demonstrating significant speedups and accuracy improvements for large-scale nonlinear flow simulations.
Contribution
It introduces a robust, accurate extension of ECSW for Petrov-Galerkin PROMs with local bases, suitable for diverse discretization methods and large-scale industrial applications.
Findings
Fast, parallelizable offline phase.
Large-scale turbulent flow speedups of several orders.
High accuracy in large-scale nonlinear simulations.
Abstract
The energy-conserving sampling and weighting (ECSW) method is a hyperreduction method originally developed for accelerating the performance of Galerkin projection-based reduced-order models (PROMs) associated with large-scale finite element models, when the underlying projected operators need to be frequently recomputed as in parametric and/or nonlinear problems. In this paper, this hyperreduction method is extended to Petrov-Galerkin PROMs where the underlying high-dimensional models can be associated with arbitrary finite element, finite volume, and finite difference semi-discretization methods. Its scope is also extended to cover local PROMs based on piecewise-affine approximation subspaces, such as those designed for mitigating the Kolmogorov -width barrier issue associated with convection-dominated flow problems. The resulting ECSW method is shown in this paper to be robust and…
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