The ROMES method for statistical modeling of reduced-order-model error

05/20/2014
by   Martin Drohmann, et al.
0

This work presents a technique for statistically modeling errors introduced by reduced-order models. The method employs Gaussian-process regression to construct a mapping from a small number of computationally inexpensive `error indicators' to a distribution over the true error. The variance of this distribution can be interpreted as the (epistemic) uncertainty introduced by the reduced-order model. To model normed errors, the method employs existing rigorous error bounds and residual norms as indicators; numerical experiments show that the method leads to a near-optimal expected effectivity in contrast to typical error bounds. To model errors in general outputs, the method uses dual-weighted residuals---which are amenable to uncertainty control---as indicators. Experiments illustrate that correcting the reduced-order-model output with this surrogate can improve prediction accuracy by an order of magnitude; this contrasts with existing `multifidelity correction' approaches, which often fail for reduced-order models and suffer from the curse of dimensionality. The proposed error surrogates also lead to a notion of `probabilistic rigor', i.e., the surrogate bounds the error with specified probability.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/09/2019

Statistical closure modeling for reduced-order models of stationary systems by the ROMES method

This work proposes a technique for constructing a statistical closure mo...
research
08/06/2018

Machine-learning error models for approximate solutions to parameterized systems of nonlinear equations

This work proposes a machine-learning framework for constructing statist...
research
01/13/2017

Multivariate predictions of local reduced-order-model errors and dimensions

This paper introduces multivariate input-output models to predict the er...
research
06/07/2022

Uniform Bounds with Difference Quotients for Proper Orthogonal Decomposition Reduced Order Models of the Burgers Equation

In this paper, we work uniform error bounds for proper orthogonal decomp...
research
03/04/2021

Optimization-based parametric model order reduction via ℋ_2⊗ℒ_2 first-order necessary conditions

In this paper, we generalize existing frameworks for ℋ_2⊗ℒ_2-optimal mod...
research
05/30/2023

A boundary-oriented reduced Schwarz domain decomposition technique for parametric advection-diffusion problems

We present in this paper the results of a research motivated by the need...
research
03/11/2022

Research on Parallel SVM Algorithm Based on Cascade SVM

Cascade SVM (CSVM) can group datasets and train subsets in parallel, whi...

Please sign up or login with your details

Forgot password? Click here to reset