Adaptive Gaussian Process Regression for Efficient Building of Surrogate Models in Inverse Problems

03/10/2023
by   Phillip Semler, et al.
0

In a task where many similar inverse problems must be solved, evaluating costly simulations is impractical. Therefore, replacing the model y with a surrogate model y_s that can be evaluated quickly leads to a significant speedup. The approximation quality of the surrogate model depends strongly on the number, position, and accuracy of the sample points. With an additional finite computational budget, this leads to a problem of (computer) experimental design. In contrast to the selection of sample points, the trade-off between accuracy and effort has hardly been studied systematically. We therefore propose an adaptive algorithm to find an optimal design in terms of position and accuracy. Pursuing a sequential design by incrementally appending the computational budget leads to a convex and constrained optimization problem. As a surrogate, we construct a Gaussian process regression model. We measure the global approximation error in terms of its impact on the accuracy of the identified parameter and aim for a uniform absolute tolerance, assuming that y_s is computed by finite element calculations. A priori error estimates and a coarse estimate of computational effort relate the expected improvement of the surrogate model error to computational effort, resulting in the most efficient combination of sample point and evaluation tolerance. We also allow for improving the accuracy of already existing sample points by continuing previously truncated finite element solution procedures.

READ FULL TEXT

page 17

page 19

page 24

research
02/09/2023

Introduction To Gaussian Process Regression In Bayesian Inverse Problems, With New ResultsOn Experimental Design For Weighted Error Measures

Bayesian posterior distributions arising in modern applications, includi...
research
03/30/2020

A Blackbox Yield Estimation Workflow with Gaussian Process Regression for Industrial Problems

In this paper an efficient and reliable method for stochastic yield esti...
research
11/30/2022

Learning non-stationary and discontinuous functions using clustering, classification and Gaussian process modelling

Surrogate models have shown to be an extremely efficient aid in solving ...
research
12/20/2019

Adaptive Newton-Monte Carlo for efficient and fully error controlled yield optimization

In this paper we present an efficient and fully error controlled algorit...
research
06/06/2022

Deep Learning-based FEA surrogate for sub-sea pressure vessel

During the design process of an autonomous underwater vehicle (AUV), the...
research
10/31/2018

A Sequential Design Approach for Calibrating a Dynamic Population Growth Model

A comprehensive understanding of the population growth of a variety of p...
research
05/12/2019

Adaptive surrogate models for parametric studies

The computational effort for the evaluation of numerical simulations bas...

Please sign up or login with your details

Forgot password? Click here to reset