Advanced Modeling and Simulation in Engineering Sciences (Nov 2020)

Constrained multi-fidelity surrogate framework using Bayesian optimization with non-intrusive reduced-order basis

  • Hanane Khatouri,
  • Tariq Benamara,
  • Piotr Breitkopf,
  • Jean Demange,
  • Paul Feliot

DOI
https://doi.org/10.1186/s40323-020-00176-z
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 20

Abstract

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Abstract This 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.

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