Randomized Residual-Based Error Estimators for Parametrized Equations
Author(s)
Patera, Anthony T.
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We propose a randomized a posteriori error estimator for reduced order approximations of parametrized (partial) differential equations. The error estimator has several important properties: the effectivity is close to unity with prescribed lower and upper bounds at specified high probability; the estimator does not require the calculation of stability (coercivity, or inf-sup) constants; the online cost to evaluate the a posteriori error estimator is commensurate with the cost to find the reduced order approximation; and the probabilistic bounds extend to many queries with only modest increase in cost. To build this estimator, we first estimate the norm of the error with a Monte Carlo estimator using Gaussian random vectors whose covariance is chosen according to the desired error measure, e.g., user-defined norms or quantity of interest. Then, we introduce a dual problem with random right-hand side the solution of which allows us to rewrite the error estimator in terms of the residual of the original equation. In order to have a fast-to-evaluate estimator, model order reduction methods can be used to approximate the random dual solutions. Here, we propose a greedy algorithm that is guided by a scalar quantity of interest depending on the error estimator. Numerical experiments on a multiparametric Helmholtz problem demonstrate that this strategy yields rather low-dimensional reduced dual spaces.
Date issued
2019-01Department
Massachusetts Institute of Technology. Department of Mechanical EngineeringJournal
SIAM journal on scientific computing
Publisher
Society for Industrial & Applied Mathematics (SIAM)
Citation
Smetana, Kathrin, Oliver Zahm and Anthony T. Patera. "Randomized Residual-Based Error Estimators for Parametrized Equations." SIAM journal on scientific computing 41 (2019):A900-A926 © 2019 The Author(s)
Version: Final published version
ISSN
1064-8275
1095-7197
Keywords
Applied Mathematics, Computational Mathematics