纵向滑移比估计的深度学习

Raffaele Marotta, Valentin Ivanov, S. Strano, M. Terzo, C. Tordela
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引用次数: 0

摘要

在公路车辆中,轮胎与路面之间的相互作用力受到纵向滑移率的强烈影响。因此,这个运动学量是研究车辆动力学中最重要的量之一。这一数量的实时知识可以使相互作用力的估计和控制系统的发展,以提高安全性和处理。特别是防抱死制动系统(ABS)和牵引控制系统(TCS)。直接测量这一数量需要在轮胎内部插入传感器,从而增加了制造的复杂性和成本。本文提出了一种基于其他容易测量或估计的量的纵向滑移比的估计方法。该估计器利用神经网络,并基于初步的物理考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for the Estimation of the Longitudinal Slip Ratio
In a road vehicle, the interaction forces between tire and road are strongly influenced by the longitudinal slip ratio. This kinematic quantity, therefore, represents one of the most important in the study of vehicle dynamics. The real-time knowledge of this quantity can allow the estimation of the interaction forces and the development of control systems to improve safety and handling. In particular, Anti-lock Braking Systems (ABS) and Traction Control Systems (TCS). Direct measurements of this quantity would require the insertion of sensors inside the tire, with consequent manufacturing complexity and increased costs. This paper proposes an estimate of the longitudinal slip ratio based on other easily measurable or estimable quantities. This estimator makes use of Neural Networks and is based on preliminary physical considerations.
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