Author:
Khatouri Hanane,Benamara Tariq,Breitkopf Piotr,Demange Jean,Feliot Paul
Abstract
AbstractThis article addresses the problem of constrained derivative-free optimization in a multi-fidelity (or variable-complexity) framework using Bayesian optimization techniques. It is assumed that the objective and constraints involved in the optimization problem can be evaluated using either an accurate but time-consuming computer program or a fast lower-fidelity one. In this setting, the aim is to solve the optimization problem using as few calls to the high-fidelity program as possible. To this end, it is proposed to use Gaussian process models with trend functions built from the projection of low-fidelity solutions on a reduced-order basis synthesized from scarce high-fidelity snapshots. A study on the ability of such models to accurately represent the objective and the constraints and a comparison of two improvement-based infill strategies are performed on a representative benchmark test case.
Funder
Association Nationale de la Recherche et de la Technologie
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Engineering (miscellaneous),Modelling and Simulation
Cited by
2 articles.
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