Design sensitivity analysis with polynomial chaos for robust optimization

被引:0
作者
Chengkun Ren
Fenfen Xiong
Bo Mo
Anik Chawdhury
Fenggang Wang
机构
[1] Beijing Institute of Technology,School of Aerospace Engineering
来源
Structural and Multidisciplinary Optimization | 2021年 / 63卷
关键词
Robust design optimization; Polynomial chaos; Gauss-type quadrature; Design sensitivity;
D O I
暂无
中图分类号
学科分类号
摘要
Polynomial chaos (PC) methods with Gauss-type quadrature formulae have been widely applied for robust design optimization. During the robust optimization, gradient-based optimization algorithms are commonly employed, where the sensitivities of the mean and variance of the output response with respect to design variables are calculated. For robust optimization with computationally expensive response functions, although the PC method can significantly reduce the computational cost, the direct application of the classical finite difference method for the analysis of the design sensitivity is impractical with a limited computational budget. Therefore, in this paper, a semi-analytical design sensitivity analysis method based on the PC method is proposed, in which the sensitivity is directly derived based on the Gauss-type quadrature formula without additional function evaluations. Comparative studies conducted on several mathematical examples and an aerodynamic robust optimization problem revealed that the proposed method can reduce the computational cost of robust optimization to a certain extent with comparable accuracy compared with the finite difference-based PC method.
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页码:357 / 373
页数:16
相关论文
共 81 条
[1]  
Abramowitz M(1966)Handbook of mathematical functions with formulas, graphs, and mathematical tables Phys Today 19 120-121
[2]  
Stegun IA(2007)Robust optimization–a comprehensive survey Comput Methods Appl Mech Eng 196 3190-3218
[3]  
Romer RH(2011)Adaptive sparse polynomial chaos expansion based on least angle regression J Comput Phys 230 2345-2367
[4]  
Beyer HG(2016)Robust optimal design of chilled water systems in buildings with quantified uncertainty and reliability for minimized life-cycle cost Energ Buildings 126 159-169
[5]  
Sendhoff B(2016)Design sensitivity method for sampling-based RBDO with varying standard deviation ASME J Mech, Des 138 011405-646
[6]  
Blatman G(2015)Robust aerodynamic design optimization using polynomial chaos J Aircraft 46 635-336
[7]  
Sudret B(2011)Optimal trajectory generation with probabilistic system uncertainty using polynomial chaos J Dyn Sys, Meas, Control 133 014501-76
[8]  
Cheng Q(2018)Affordable uncertainty quantification for industrial problems: application to aero-engine fans J Turbomach 140 061005–061005-12-147
[9]  
Wang SW(2013)Simultaneous kriging-based estimation and optimization of mean response J Global Optim 55 313-70
[10]  
Yan CC(2016)Gradient based design optimization under uncertainty via stochastic expansion methods Comput Method Appl M 306 47-243