Aerodynamics-guided machine learning for design optimization of electric vehicles

Jonathan Tran, Kai Fukami, Kenta Inada, Daisuke Umehara, Yoshimichi Ono, Kenta Ogawa, Kunihiko Taira
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Abstract

The transition to electric vehicles is driving a fundamental shift in the automobile design process. Changes in constraints afforded by the absence of a combustion engine create new opportunities for modifying vehicle geometries. Current approaches to optimizing vehicle aerodynamics require a vast amount of computational studies and physical experiments, which are expensive when performing parameter sweeps over conceivable geometric configurations, suggesting the need for more efficient surrogate models to assist analysis. Here we analyze a dataset of industry-quality automobile geometries with their associated aerodynamic performance obtained from experimentally validated, high-fidelity large-eddy simulations. We show that a relationship between these geometries and their respective aerodynamics can be extracted in a low-dimensional manner by leveraging a nonlinear autoencoder which is simultaneously trained to estimate the drag coefficient from the latent variables. We perform aerodynamic design optimization of vehicle designs by making use of the learned aerodynamic relationship in the low-order space obtained by the model. We demonstrate that the aerodynamic trends for the geometries produced from the optimization process show agreement with validation simulations. The findings of this work demonstrate the application of data-driven approaches to the analysis and design of vehicles in a production environment. Jonathan Tran and colleagues use aerodynamics-guided machine learning for the shape optimization of electric cars. Their approach saves computational time for high complexity engineering tasks, e.g., computational fluid dynamics-based design optimization.

Abstract Image

空气动力学引导的机器学习,用于电动汽车的优化设计。
向电动汽车的过渡正在推动汽车设计流程发生根本性转变。由于没有了内燃机,约束条件发生了变化,这为修改汽车几何形状创造了新的机会。目前优化汽车空气动力学的方法需要大量的计算研究和物理实验,在对可想象的几何配置进行参数扫描时成本高昂,这表明需要更高效的替代模型来辅助分析。在这里,我们分析了一组工业级汽车几何形状及其相关气动性能,这些气动性能是从经过实验验证的高保真大涡流模拟中获得的。我们的研究表明,利用非线性自动编码器,可以低维方式提取这些几何形状与各自空气动力学之间的关系。我们利用模型获得的低阶空间中学习到的空气动力学关系,对车辆设计进行空气动力学设计优化。我们证明,优化过程中产生的几何形状的空气动力学趋势与验证模拟结果一致。这项工作的研究结果证明了数据驱动方法在生产环境下车辆分析和设计中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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