Multi-objective robust optimization using adaptive surrogate models for problems with mixed continuous-categorical parameters

被引:0
作者
Maliki Moustapha
Alina Galimshina
Guillaume Habert
Bruno Sudret
机构
[1] ETH Zurich,Chair of Risk, Safety and Uncertainty Quantification
[2] ETH Zurich,Chair of Sustainable Construction
来源
Structural and Multidisciplinary Optimization | 2022年 / 65卷
关键词
Robust optimization; Multi-objective optimization; Kriging; NSGA-II; Categorical variables; Life cycle analysis;
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摘要
Explicitly accounting for uncertainties is paramount to the safety of engineering structures. Optimization which is often carried out at the early stage of the structural design offers an ideal framework for this task. When the uncertainties are mainly affecting the objective function, robust design optimization is traditionally considered. This work further assumes the existence of multiple and competing objective functions that need to be dealt with simultaneously. The optimization problem is formulated by considering quantiles of the objective functions which allows for the combination of both optimality and robustness in a single metric. By introducing the concept of common random numbers, the resulting nested optimization problem may be solved using a general-purpose solver, herein the non-dominated sorting genetic algorithm (NSGA-II). The computational cost of such an approach is however a serious hurdle to its application in real-world problems. We therefore propose a surrogate-assisted approach using Kriging as an inexpensive approximation of the associated computational model. The proposed approach consists of sequentially carrying out NSGA-II while using an adaptively built Kriging model to estimate the quantiles. Finally, the methodology is adapted to account for mixed categorical-continuous parameters as the applications involve the selection of qualitative design parameters as well. The methodology is first applied to two analytical examples showing its efficiency. The third application relates to the selection of optimal renovation scenarios of a building considering both its life cycle cost and environmental impact. It shows that when it comes to renovation, the heating system replacement should be the priority.
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[1]  
Au SK(2005)Reliability-based design sensitivity by efficient simulation Comput Struct 83 1048-1061
[2]  
Bachoc F(2013)Cross validation and maximum likelihood estimations of hyper-parameters of Gaussian processes with model misspecifications Comput Stat Data Anal 66 55-69
[3]  
Beck AT(2015)A comparison between robust and risk-based optimization under uncertainty Struct Multidisc Optim 52 479-492
[4]  
Gomes WJS(2007)Robust optimization—a comprehensive survey Comput Methods Appl Mech Eng 196 3190-3218
[5]  
Lopez RH(2008)Efficient global reliability analysis for nonlinear implicit performance functions AIAA J 46 2459-2468
[6]  
Beyer HG(2019)A critical review of surrogate assisted robust design optimization Arch Comput Method E 26 245-274
[7]  
Sendhoff B(2014)Fast calculation of multiobjective probability of improvement and expected improvement criteria for Pareto optimization J Glob Optim 60 575-594
[8]  
Bichon BJ(2002)A fast and elitist multiobjective genetic algorithm: NSGA-II IEEE Trans Evol Comput 6 182-197
[9]  
Eldred MS(2016)A review of surrogate assisted multiobjective evolutionary algorithms Comput Intel Neurosci 2016 1-14
[10]  
Swiler L(2004)Robust design of structures using optimization methods Comput Method Appl Mech Eng 193 2221-2237