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On the Use of Upper Trust Bounds in Constrained Bayesian Optimization Infill Criteria
Author(s) -
Rémy Priem,
Nathalie Bartoli,
Youssef Diouane
Publication year - 2019
Publication title -
aiaa aviation 2019 forum
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2019-2986
Subject(s) - bayesian optimization , mathematical optimization , surrogate model , gaussian process , computer science , optimization problem , bayesian probability , process (computing) , gaussian , constrained optimization problem , algorithm , mathematics , artificial intelligence , physics , quantum mechanics , operating system
In order to handle constrained optimization problems with a large number of design variables, a new approach has been proposed to address constraints in a surrogate-based optimization framework. This approach focuses on sequential enrichment using adaptive surrogate models based on Bayesian optimization approach, and Gaussian process models. A constraints criterion using the uncertainty estimation of the Gaussian process models is introduced. Different evolutions of the algorithm, based on the accuracy of the constraints surrogate models, are used for selecting the infill sample points. The resulting algorithm has been tested on the well known modified Branin optimization problem.

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