2024
DOI: 10.1038/s44172-024-00322-0
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Aerodynamics-guided machine learning for design optimization of electric vehicles

Jonathan Tran,
Kai Fukami,
Kenta Inada
et al.

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 ass… Show more

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