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Deep Learning for Real-Time Aerodynamic Evaluations of Arbitrary Vehicle Shapes

Journal Article
15-15-02-0006
ISSN: 2770-3460, e-ISSN: 2770-3479
Published March 22, 2022 by SAE International in United States
Deep Learning for Real-Time Aerodynamic Evaluations of Arbitrary
                    Vehicle Shapes
Sector:
Citation: Jacob, S., Mrosek, M., Othmer, C., and Köstler, H., "Deep Learning for Real-Time Aerodynamic Evaluations of Arbitrary Vehicle Shapes," SAE Int. J. Passeng. Veh. Syst. 15(2):77-90, 2022, https://doi.org/10.4271/15-15-02-0006.
Language: English

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