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Aerodynamic Optimization of the ICE 2 High-Speed Train Nose using a Genetic Algorithm and Metamodels

机译:使用遗传算法和元模具的冰2高速列车鼻的空气动力学优化

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An aerodynamic optimization of the ICE 2 high-speed train nose in term of front wind action sensitivity is carried out in this paper. The nose is parametrically defined by Bezier Curves, and a three-dimensional representation of the nose is obtained using thirty one design variables. This implies a more complete parametrization, allowing the representation of a real model. In order to perform this study a genetic algorithm (GA) is used. Using a GA involves a large number of evaluations before finding such optimal. Hence it is proposed the use of metamodels or surrogate models to replace Navier-Stokes solver and speed up the optimization process. Adaptive sampling is considered to optimize surrogate model fitting and minimize computational cost when dealing with a very large number of design parameters. The paper introduces the feasibility of using GA in combination with metamodels for real high-speed train geometry optimization.
机译:本文进行了前线动作灵敏度的冰2高速列车鼻的空气动力学优化。鼻子由Bezier曲线参数定义,并且使用三十一个设计变量获得鼻的三维表示。这意味着一个更完整的参数化,允许真实模型的表示。为了执行本研究,使用遗传算法(GA)。使用GA涉及大量的评估,然后发现如此最佳。因此,建议使用元模型或代理模型来取代Navier-Stokes求解器并加快优化过程。自适应采样被认为是优化代理模型拟合并在处理非常大量的设计参数时最小化计算成本。本文介绍了使用Ga与Metomodels结合使用的用于实际高速列车几何优化的可行性。

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