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Multiobjective reliability-based design optimisation for front structure of an electric vehicle using hybrid metamodel accuracy improvement strategy-based probabilistic sufficiency factor method

机译:基于混合元模型精度改进策略的概率充足因子法基于多目标可靠性的电动汽车前部结构设计优化

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摘要

The determinate multiobjective optimisation (DMOO) without considering effects of uncertainties on vehicle body design may fail to satisfy the desired property in practice. In this paper, a multiobjective reliability-based design optimisation (MORBDO) procedure is proposed to perform the design for front structure of an electric vehicle. In which, body performances including full-lap frontal crashworthiness, modal characteristic and lightweight level are involved and coordinated, and the thickness of five key components with geometric tolerances are selected as design variables. Probabilistic constraint in MORBDO is addressed by Monte Carlo simulation (MCS) technique-based probabilistic sufficiency factor (PSF) method. To improve the accuracy of optimisation results, a closed-loop system named hybrid metamodel accuracy improvement strategy is presented here by organising adaptive optimum metamodel selection and the max-min distance approach-based new samples addition technique together. The optimisation problem is solved by the multiobjective particle-swarm-optimisation algorithm. The effectiveness of the proposed procedure is certified by successfully obtaining more accurate and reliable alternative optimum schemes in the design for the front body structure in comparison with DMOO, normal PSF method and safety factor method.
机译:不考虑不确定性对车身设计的影响的确定性多目标优化(DMOO)在实践中可能无法满足所需的特性。本文提出了一种基于多目标可靠性的设计优化(MORBDO)程序来进行电动汽车前部结构的设计。其中,涉及并协调了包括全膝部正面耐撞性,模态特征和轻量化水平在内的车身性能,并选择了具有几何公差的五个关键部件的厚度作为设计变量。 MORBDO中的概率约束是通过基于蒙特卡罗模拟(MCS)技术的概率充足因子(PSF)方法解决的。为了提高优化结果的准确性,在此提出了一种闭环系统,称为混合元模型精度改进策略,该方法通过组织自适应最优元模型选择和基于最大-最小距离方法的新样本添加技术共同提出。通过多目标粒子群优化算法解决了优化问题。与DMOO,常规PSF方法和安全系数方法相比,通过成功地在前部车身结构设计中获得更准确,可靠的替代最佳方案,从而证明了所提出程序的有效性。

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