Machine-learning error models for approximate solutions to parameterized systems of nonlinear equations
Brian A. Freno, Kevin T. Carlberg

TL;DR
This paper introduces a machine-learning framework to accurately model errors in approximate solutions to parameterized nonlinear systems, combining regression-based predictions with stochastic noise modeling for improved error estimation.
Contribution
The work presents a novel combined deterministic and stochastic machine-learning approach for error modeling in approximate solutions, outperforming existing methods.
Findings
The method accurately predicts errors across various problems.
It effectively quantifies epistemic uncertainty in approximate solutions.
Numerical experiments show significant performance improvements.
Abstract
This work proposes a machine-learning framework for constructing statistical models of errors incurred by approximate solutions to parameterized systems of nonlinear equations. These approximate solutions may arise from early termination of an iterative method, a lower-fidelity model, or a projection-based reduced-order model, for example. The proposed statistical model comprises the sum of a deterministic regression-function model and a stochastic noise model. The method constructs the regression-function model by applying regression techniques from machine learning (e.g., support vector regression, artificial neural networks) to map features (i.e., error indicators such as sampled elements of the residual) to a prediction of the approximate-solution error. The method constructs the noise model as a mean-zero Gaussian random variable whose variance is computed as the sample variance of…
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