A robust error estimator and a residual-free error indicator for reduced basis methods

The Reduced Basis Method (RBM) is a rigorous model reduction approach for solving parameterizedpartial differential equations. It identifies a low-dimensional subspace for approximation of the parametric solution manifold that is embedded in high-dimensional space. A reduced order model is subsequen...

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Veröffentlicht in:Computers & mathematics with applications (1987) 2019-04, Vol.77 (7), p.1963-1979
Hauptverfasser: Chen, Yanlai, Jiang, Jiahua, Narayan, Akil
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container_end_page 1979
container_issue 7
container_start_page 1963
container_title Computers & mathematics with applications (1987)
container_volume 77
creator Chen, Yanlai
Jiang, Jiahua
Narayan, Akil
description The Reduced Basis Method (RBM) is a rigorous model reduction approach for solving parameterizedpartial differential equations. It identifies a low-dimensional subspace for approximation of the parametric solution manifold that is embedded in high-dimensional space. A reduced order model is subsequently constructed in this subspace. RBM relies on residual-based error indicators or a posteriori error bounds to guide construction of the reduced solution subspace, to serve as a stopping criteria, and to certify the resulting surrogate solutions. Unfortunately, it is well-known that the standard algorithm for residual norm computation suffers from premature stagnation at the level of the square root of machine precision. In this paper, we develop two alternatives to the standard offline phase of reduced basis algorithms. First, we design a robust strategy for computation of residual error indicators that allows RBM algorithms to enrich the solution subspace with accuracy beyond root machine precision. Secondly, we propose a new error indicator based on the Lebesgue function in interpolation theory. This error indicator does not require computation of residual norms, and instead only requires the ability to compute the RBM solution. This residual-free indicator is rigorous in that it bounds the error committed by the RBM approximation, but up to an uncomputable multiplicative constant. Because of this, the residual-free indicator is effective in choosing snapshots during the offline RBM phase, but cannot currently be used to certify error that the approximation commits. However, it circumvents the need for a posteriori analysis of numerical methods, and therefore can be effective on problems where such a rigorous estimate is hard to derive.
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source Elsevier ScienceDirect Journals; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Algorithms
Approximation
Computation
Differential equations
Error reduction
Error stagnation
Greedy algorithms
Indicators
Interpolation
Mathematical models
Model reduction
Norms
Numerical methods
Reduced basis method
Reduced order models
Residual-based error estimation
Robustness (mathematics)
Stagnation
Subspaces
title A robust error estimator and a residual-free error indicator for reduced basis methods
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