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Vehicle System Dynamics
International Journal of Vehicle Mechanics and Mobility
Volume 60, 2022 - Issue 10
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Articles

Multiphysical MF-based tyre modelling and parametrisation for vehicle setup and control strategies optimisation

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Pages 3462-3483 | Received 05 May 2021, Accepted 20 Jul 2021, Published online: 21 Sep 2021

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