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Robust Expected Violation Criterion for Constrained Robust Design Problems and Its Application in Automotive Lightweight Design

Robust Expected Violation Criterion for Constrained Robust Design Problems and Its Application in Automotive Lightweight Design
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摘要 Metamodeling techniques are commonly used to replace expensive computer simulations in robust design problems. Due to the discrepancy between the simulation model and metamodel, a robust solution in the infeasible region can be found according to the prediction error in constraint responses. In deterministic optimizations, balancing the predicted constraint and metamodeling uncertainty, expected violation (EV) criterion can be used to explore the design space and add samples to adaptively improve the fitting accuracy of the constraint boundary. However in robust design problems, the predicted error of a robust design constraint cannot be represented by the metamodel prediction uncertainty directly. The conventional EV-based sequential sampling method cannot be used in robust design problems. In this paper, by investigating the effect of metamodeling uncertainty on the robust design responses, an extended robust expected violation (REV) function is proposed to improve the prediction accuracy of the robust design constraints. To validate the benefits of the proposed method, a crashworthiness-based lightweight design example, i.e. a highly nonlinear constrained robust design problem, is given. Results show that the proposed method can mitigate the prediction error in robust constraints and ensure the feasibility of the robust solution. Metamodeling techniques are commonly used to replace expensive computer simulations in robust design problems. Due to the discrepancy between the simulation model and metamodel, a robust solution in the infeasible region can be found according to the prediction error in constraint responses. In deterministic optimizations, balancing the predicted constraint and metamodeling uncertainty, expected violation (EV) criterion can be used to explore the design space and add samples to adaptively improve the fitting accuracy of the constraint boundary. However in robust design problems, the predicted error of a robust design constraint cannot be represented by the metamodel prediction uncertainty directly. The conventional EV-based sequential sampling method cannot be used in robust design problems. In this paper, by investigating the effect of metamodeling uncertainty on the robust design responses, an extended robust expected violation (REV) function is proposed to improve the prediction accuracy of the robust design constraints. To validate the benefits of the proposed method, a crashworthiness-based lightweight design example, i.e. a highly nonlinear constrained robust design problem, is given. Results show that the proposed method can mitigate the prediction error in robust constraints and ensure the feasibility of the robust solution.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2013年第3期257-263,共7页 上海交通大学学报(英文版)
基金 Foundation item. the National Natural Science Foundation of China (No. 50875164)
关键词 道路交通 交通管理 交通规则 汽车驾驶 robust design, robust expected violation (REV), sequential sampling method, automotive lightweight design
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  • 1张峻,柯映林.序列响应面方法在覆盖件成形过程优化中的应用研究[J].汽车工程,2005,27(2):246-250. 被引量:20
  • 2熊俊涛,乔志德,韩忠华.基于响应面法的跨声速机翼气动优化设计[J].航空学报,2006,27(3):399-402. 被引量:56
  • 3王利,杨雄飞,陆匠心.汽车轻量化用高强度钢板的发展[J].钢铁,2006,41(9):1-8. 被引量:155
  • 4张立新,隋允康,杜家政.基于响应面方法的结构耐撞性优化[J].北京工业大学学报,2007,33(2):129-133. 被引量:8
  • 5KOCH P N, YANG R J, GU Lei. Design for six sigma through robust optimization[J]. Struct. Multidist. Optim., 2004, 26: 235-248.
  • 6KURTARAN H, ESKANDARIAN A, MARZOUGUIEL D. Crash-worthiness design optimization using uccessive response surface approximation[J]. Computational Mechanics, 2002, 29: 409-421.
  • 7STANDER N, CRAIG K J. On the robustness of the successive response surface method for simulation-based optimization[J]. Engineering Computations, 2002, 19: 431-450.
  • 8KENNEDY J, EBERHART R C. Particle swarm optimization[C/CD]//Proc, of IEEE International Conference on Neural Networks, 1995.
  • 9EBERHART R C, SHI Y. Particle swarm optimization: Develoments, applications and resources[C]//Proc, of Congress on Evolutionary Computation 2001, Piscataway, NJ: IEEE Press, 2001: 81-86.
  • 10PARSOPOULOS K E, VARHATIS M N. Particle swarm optimization method in multiobjective problems[C]//Proc of ACM Symp. on Applied Computing, Madrid: ACM Press, 2002: 603-607.

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