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VEHICLE CRASHWORTHINESS DESIGN VIA A SURROGATE MODEL ENSEMBLE AND A CO-EVOLUTIONARY GENETIC ALGORITHM

机译:通过代理模型集合和共同进化遗传算法的车辆撞击性设计

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摘要

This paper presents a new method for designing vehicle structures for crashworthiness using surrogate models and a genetic algorithm. Inspired by the classifier ensemble approaches in pattern recognition, the method estimates the crash performance of a candidate design based on an ensemble of surrogate models constructed from the different sets of samples of finite element analyses. Multiple sub-populations of candidate designs are evolved, in a co-evolutionary fashion, to minimize the different aggregates of the outputs of the surrogate models in the ensemble, as well as the raw output of each surrogate. With the same sample size of finite element analyses, it is expected the method can provide wider ranges potentially high-performance designs than the conventional methods that employ a single surrogate model, by effectively compensating the errors associated with individual surrogate models. Two case studies on simplified and full vehicle models subject to full-overlap frontal crash conditions are presented for demonstration.
机译:本文提出了一种基于代理模型和遗传算法设计的车辆结构耐撞性的一种新方法。由分类器合奏启发接近在模式识别中,所述方法估计基于来自不同组的有限元分析的样品的构造替代模型的集合的候选设计的碰撞性能。候选设计的多个子群体进化,在共进化方式,以最小化在合奏的替代模型的输出的不同的聚集体,以及每个代理的原始输出。与有限元分析的相同的样本大小,预期该方法能潜在地提供更广泛的范围高性能设计比常规方法即采用单一替代模型,通过有效地补偿与个别替代模型相关联的误差。关于简化和全车型受到全重叠正面碰撞条件的两个案例研究,提出了示范。

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