Multi-Fidelity Surrogate Based on Single Linear Regression
Yiming Zhang, Nam-Ho Kim, Chanyoung Park, Raphael T. Haftka

TL;DR
This paper introduces a simple, efficient multi-fidelity surrogate modeling framework using linear regression, combining low- and high-fidelity data for accurate predictions without complex hyper-parameter tuning.
Contribution
It proposes the LS-MFS method that models high-fidelity responses as a linear combination of low-fidelity models and discrepancy functions, ensuring unique solutions and broad applicability.
Findings
Efficient parameter estimation via linear regression.
Applicable to various regression models and applications.
Guarantees unique fitting process.
Abstract
Various frameworks have been proposed to predict mechanical system responses by combining data from different fidelities for design optimization and uncertainty quantification as reviewed by Fern\'andez-Godino et al. and Peherstorfer et al.. Among all frameworks, the Bayesian framework based on Gaussian processes has the potential of highest accuracy. However, the Bayesian framework requires optimization for estimating hyper-parameters, and there is a risk of estimating inappropriate hyper-parameters as Kriging surrogate often does, especially in the presence of noisy data. We propose an easy and yet powerful framework for practical design and applications. In this technical note, we revised a heuristic framework which minimizes the prediction errors at high-fidelity samples using optimization. The system behavior (high-fidelity behavior) is approximated by a linear combination of the…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Probabilistic and Robust Engineering Design · Optimal Experimental Design Methods
