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

被引:0
作者
Ali Hebbal
Loïc Brevault
Mathieu Balesdent
El-Ghazali Talbi
Nouredine Melab
机构
[1] ONERA,
[2] DTIS,undefined
[3] Université Paris Saclay,undefined
[4] Université de Lille,undefined
[5] CNRS/CRIStAL,undefined
来源
Optimization and Engineering | 2021年 / 22卷
关键词
Bayesian optimization; Gaussian process; Deep Gaussian process; Non-stationary function; Global constrained optimization;
D O I
暂无
中图分类号
学科分类号
摘要
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.
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页码:321 / 361
页数:40
相关论文
共 92 条
[1]  
Amine Bouhlel M(2018)Efficient global optimization for high-dimensional constrained problems by using the kriging models combined with the partial least squares method Eng Optim 50 2038-2053
[2]  
Bartoli N(2007)Non-stationary variogram models for geostatistical sampling optimisation: an empirical investigation using elevation data Comput Geosci 33 1285-1300
[3]  
Regis RG(2019)Adaptive modeling strategy for constrained global optimization with application to aerodynamic wing design Aerosp Sci Technol 90 85-102
[4]  
Otsmane A(2017)GPflow: a Gaussian process library using TensorFlow J Mach Learn Res 18 1-6
[5]  
Morlier J(2015)Local gaussian process approximation for large computer experiments J Comput Gr Stat 24 561-578
[6]  
Atkinson PM(2008)Bayesian treed gaussian process models with an application to computer modeling J Am Stat Assoc 103 1119-1130
[7]  
Lloyd CD(2019)OpenMDAO: an open-source framework for multidisciplinary design, analysis, and optimization Struct Multidiscip Optim 59 1075-1104
[8]  
Bartoli N(1990)Kriging and automated variogram modeling within a moving window Atmos Environ Part A Gen Top 24 1759-1769
[9]  
Lefebvre T(1999)Non-stationary spatial modeling Bayesian Stat 6 761-768
[10]  
Dubreuil S(1998)Efficient global optimization of expensive black-box functions J Glob Optim 13 455-492