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A Comparative study on multiobjective reliable and robust optimization for crashworthiness design of vehicle structure

机译:车辆结构耐撞性设计的多目标可靠鲁棒优化比较研究

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Design optimization without considering uncertainties of system variables and parameters can be problematic in real life. In order to take into account the effect of uncertainties, reliable and robust design schemes have proven effective, but limited studies have been reported to compare their difference in a multiobjective framework. This paper takes a typical vehicle structure subject to offset frontal crashing scenario as an example to compare reliable and robust designs with their deterministic counterpart. The thicknesses of some key components of vehicle frontal structures were selected as design variables, the vehicle weight and energy absorption as the objectives, deceleration and firewall intrusion as the constraints. The deterministic multiobjective optimization problem was first solved by adopting Design of Experimental (DOE), metamodels and Non-dominated Sorting Genetic Algorithm II (NSGA-II). Take into account the uncertainties, a Monte Carlo Simulation (MCS) is adopted to generate random distributions of the objective and constraint functions for each design. For the reliability-based optimization the desired reliabilities of 90 %, 95 % and 99 % are considered, respectively. For the robustness-based optimization, two different formulation strategies are adopted. The optimization showed that the reliable and robust Pareto fronts are shifted away from their deterministic counterpart due to uncertainties. The different Pareto fronts yielded from the deterministic, reliable and robust designs are compared to provide some quantitative insights into how to apply these different design schemes for resolving uncertainty problems. It is shown that, compared with the baseline design, the optimizations enhance the crashworthiness of vehicle, though more conservative solutions could have been generated from the reliable and robust optimizations.
机译:在不考虑系统变量和参数不确定性的情况下进行设计优化在现实生活中可能会出现问题。为了考虑不确定性的影响,可靠且健壮的设计方案已被证明是有效的,但是已经报道了有限的研究来比较它们在多目标框架中的差异。本文以典型的车辆结构为例,比较了正面和偏向碰撞情况下可靠和鲁棒的设计与确定性的对应情况。选择车辆前部结构的一些关键部件的厚度作为设计变量,以车辆重量和能量吸收为目标,以减速度和防火墙侵入为约束。首先通过采用实验设计(DOE),元模型和非主导排序遗传算法II(NSGA-II)解决确定性多目标优化问题。考虑到不确定性,采用蒙特卡洛模拟(MCS)生成每种设计的目标函数和约束函数的随机分布。对于基于可靠性的优化,分别考虑了90%,95%和99%的期望可靠性。对于基于鲁棒性的优化,采用了两种不同的制定策略。优化结果表明,由于不确定性,可靠且健壮的Pareto前沿偏离了确定性对应。比较了确定性,可靠和健壮设计产生的不同的Pareto前沿,以提供一些定量的见解,以了解如何应用这些不同的设计方案来解决不确定性问题。结果表明,与基线设计相比,优化可以提高车辆的耐撞性,尽管可靠和稳健的优化可以生成更为保守的解决方案。

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