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Increasing automobile crash response metamodel accuracy through adjusted cross validation error based on outlier analysis

机译:通过基于异常值分析的已调整交叉验证误差来提高汽车碰撞响应元模型的准确性

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Automakers spread on effort to maintain the crashworthiness of vehicle structures while aiming to reduce their weight. Substantial weight savings can be obtained by vehicle redesign through optimisation. Finite element based crashworthiness simulation models have contributed greatly to the optimisation of vehicle structures. These high-fidelity crash simulations may be performed many times during optimisation, thereby making optimisation studies computationally intractable. Metamodels (surrogate models) that can mimic the behaviour of the crash simulation models emerge as a solution to the computational burden. Prediction capability in metamodelling can be improved by combining many different metamodels in the form of an ensemble model. In this paper, approaches based on outlier analysis of cross validation errors are proposed to increase the accuracy of ensemble models constructed for crash response predictions. Full frontal and offset frontal crash response predictions of a c-class passenger car is used for demonstration, and it is found that the proposed approach reduces the metamodelling errors up to 12% and on average by about 4.5%.
机译:汽车制造商在努力减轻车身重量的同时努力保持车身结构的耐撞性。通过优化车辆的重新设计,可以大大减轻重量。基于有限元的耐撞性仿真模型为车辆结构的优化做出了巨大贡献。在优化过程中,可以多次执行这些高保真碰撞仿真,从而使优化研究在计算上难以处理。可以模拟碰撞仿真模型行为的元模型(代理模型)作为计算负担的解决方案而出现。通过以集成模型的形式组合许多不同的元模型,可以提高元模型的预测能力。在本文中,提出了基于交叉验证错误的异常值分析的方法,以提高为碰撞响应预测而构建的集成模型的准确性。使用C级乘用车的完整正面和偏移正面碰撞响应预测进行演示,并且发现所提出的方法将亚建模误差降低了12%,平均降低了约4.5%。

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