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Bayesian optimization using deep Gaussian processes with applications to aerospace system design

Authors :
Nouredine Melab
El-Ghazali Talbi
Mathieu Balesdent
Loïc Brevault
Ali Hebbal
DTIS, ONERA, Université Paris Saclay [Palaiseau]
ONERA-Université Paris-Saclay
Optimisation de grande taille et calcul large échelle (BONUS)
Inria Lille - Nord Europe
Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre de Recherche en Informatique, Signal et Automatique de Lille - UMR 9189 (CRIStAL)
Centrale Lille-Université de Lille-Centre National de la Recherche Scientifique (CNRS)-Centrale Lille-Université de Lille-Centre National de la Recherche Scientifique (CNRS)
Centre de Recherche en Informatique, Signal et Automatique de Lille - UMR 9189 (CRIStAL)
Centrale Lille-Université de Lille-Centre National de la Recherche Scientifique (CNRS)
This work is co-funded by ONERA-The French Aerospace Lab and Université de Lille, in the context of a joint PhD thesis. Discussions with Hugh Salimbeni and Zhenwen Dai were very helpful for this work, special thanks to them. The Experiments presented in this paper were carried out using the Grid’5000 testbed, supported by a scientific interest group hosted by Inria and including CNRS, RENATER and several Universities as well as other organizations (see https://www.grid5000.fr).
Source :
Optimization and Engineering, Optimization and Engineering, 2020, ⟨10.1007/s11081-020-09517-8⟩, Optimization and Engineering, Springer Verlag, 2020, ⟨10.1007/s11081-020-09517-8⟩
Publication Year :
2020
Publisher :
Springer Science and Business Media LLC, 2020.

Abstract

Bayesian Optimization using Gaussian Processes is a popular approach to deal with optimization involving expensive black-box functions. However, because of the assumption on the stationarity of the covariance function defined in classic Gaussian Processes, this method may not be adapted for non-stationary functions involved in the optimization problem. To overcome this issue, Deep Gaussian Processes can be used as surrogate models instead of classic Gaussian Processes. This modeling technique increases the power of representation to capture the non-stationarity by considering a functional composition of stationary Gaussian Processes, providing a multiple layer structure. This paper investigates the application of Deep Gaussian Processes within Bayesian Optimization context. The specificities of this optimization method are discussed and highlighted with academic test cases. The performance of Bayesian Optimization with Deep Gaussian Processes is assessed on analytical test cases and aerospace design optimization problems and compared to the state-of-the-art stationary and non-stationary Bayesian Optimization approaches.

Details

ISSN :
15732924 and 13894420
Volume :
22
Database :
OpenAIRE
Journal :
Optimization and Engineering
Accession number :
edsair.doi.dedup.....22ebd054efc99534aa541c35091c5500