Yield Optimization using Hybrid Gaussian Process Regression and a Genetic Multi-Objective Approach
Machine Learning
2022-04-12 v1 Computational Engineering, Finance, and Science
Abstract
Quantification and minimization of uncertainty is an important task in the design of electromagnetic devices, which comes with high computational effort. We propose a hybrid approach combining the reliability and accuracy of a Monte Carlo analysis with the efficiency of a surrogate model based on Gaussian Process Regression. We present two optimization approaches. An adaptive Newton-MC to reduce the impact of uncertainty and a genetic multi-objective approach to optimize performance and robustness at the same time. For a dielectrical waveguide, used as a benchmark problem, the proposed methods outperform classic approaches.
Cite
@article{arxiv.2010.04028,
title = {Yield Optimization using Hybrid Gaussian Process Regression and a Genetic Multi-Objective Approach},
author = {Mona Fuhrländer and Sebastian Schöps},
journal= {arXiv preprint arXiv:2010.04028},
year = {2022}
}