Coarse reduced model selection for nonlinear state estimation

03/05/2021
by   James A. Nichols, et al.
0

State estimation is the task of approximately reconstructing a solution u of a parametric partial differential equation when the parameter vector y is unknown and the only information is m linear measurements of u. In [Cohen et. al., 2021] the authors proposed a method to use a family of linear reduced spaces as a generalised nonlinear reduced model for state estimation. A computable surrogate distance is used to evaluate which linear estimate lies closest to a true solution of the PDE problem. In this paper we propose a strategy of coarse computation of the surrogate distance while maintaining a fine mesh reduced model, as the computational cost of the surrogate distance is large relative to the reduced modelling task. We demonstrate numerically that the error induced by the coarse distance is dominated by other approximation errors.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2020

Nonlinear reduced models for state and parameter estimation

State estimation aims at approximately reconstructing the solution u to ...
research
06/18/2019

L1-ROC and R2-ROC: L1- and R2-based Reduced Over-Collocation methods for parametrized nonlinear partial differential equations

The onerous task of repeatedly resolving certain parametrized partial di...
research
07/22/2022

E2N: Error Estimation Networks for Goal-Oriented Mesh Adaptation

Given a partial differential equation (PDE), goal-oriented error estimat...
research
07/31/2019

Gaussian Process Regression and Conditional Polynomial Chaos for Parameter Estimation

We present a new approach for constructing a data-driven surrogate model...
research
01/13/2023

Solving PDEs with Incomplete Information

We consider the problem of numerically approximating the solutions to a ...
research
06/05/2018

Adapting Reduced Models in the Cross-Entropy Method

This paper deals with the estimation of rare event probabilities using i...

Please sign up or login with your details

Forgot password? Click here to reset