Certified Rapid Solution of Parametrized Linear Elliptic Equations: Application to Parameter Estimation


Autoria(s): Nguyen, N. C.; Liu, Guirong; Patera, Anthony T.
Data(s)

10/12/2004

10/12/2004

01/01/2005

Resumo

We present a technique for the rapid and reliable evaluation of linear-functional output of elliptic partial differential equations with affine parameter dependence. The essential components are (i) rapidly uniformly convergent reduced-basis approximations — Galerkin projection onto a space WN spanned by solutions of the governing partial differential equation at N (optimally) selected points in parameter space; (ii) a posteriori error estimation — relaxations of the residual equation that provide inexpensive yet sharp and rigorous bounds for the error in the outputs; and (iii) offline/online computational procedures — stratagems that exploit affine parameter dependence to de-couple the generation and projection stages of the approximation process. The operation count for the online stage — in which, given a new parameter value, we calculate the output and associated error bound — depends only on N (typically small) and the parametric complexity of the problem. The method is thus ideally suited to the many-query and real-time contexts. In this paper, based on the technique we develop a robust inverse computational method for very fast solution of inverse problems characterized by parametrized partial differential equations. The essential ideas are in three-fold: first, we apply the technique to the forward problem for the rapid certified evaluation of PDE input-output relations and associated rigorous error bounds; second, we incorporate the reduced-basis approximation and error bounds into the inverse problem formulation; and third, rather than regularize the goodness-of-fit objective, we may instead identify all (or almost all, in the probabilistic sense) system configurations consistent with the available experimental data — well-posedness is reflected in a bounded "possibility region" that furthermore shrinks as the experimental error is decreased.

Singapore-MIT Alliance (SMA)

Formato

1117342 bytes

application/pdf

Identificador

http://hdl.handle.net/1721.1/7375

Idioma(s)

en

Relação

High Performance Computation for Engineered Systems (HPCES);

Palavras-Chave #Linear elliptic equations #Reduced-basis method #Reduced-basis approximation #A posteriori error estimation #Parameter estimation #Inverse computational method #Possibility region
Tipo

Article