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Neural-empirical tyre model based on recursive lazy learning under combined longitudinal and lateral slip conditions

机译:纵向和横向滑移条件下基于递归惰性学习的神经经验轮胎模型

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摘要

The behaviour of the tyre plays an important role in the vehicle handling. An accurate tyre model that estimates these forces and moments it is highly essential for the studies of vehicle behaviour. For the last ten years neural networks have attracted a great deal of attention in vehicle dynamics and control. Neural networks have been effectively applied to model complex systems due to their good learning capability. In this paper a recursive lazy learning method based on neural networks is considered to model the tyre characteristics under combined braking and cornering. The proposed method is validated by comparison with experimental obtained responses. Results show the estimated model correlates very well with the data obtained experimentally. Moreover, the neural model proposed allows to include the asymetric tyre behaviour in the tyre model without difficulty.
机译:轮胎的性能在车辆操纵中起着重要作用。估算这些力和力矩的精确轮胎模型对于研究车辆行为至关重要。在过去的十年中,神经网络在车辆动力学和控制方面引起了极大的关注。神经网络由于具有良好的学习能力,已被有效地应用于复杂系统的建模。本文考虑了一种基于神经网络的递归懒惰学习方法,以对制动和转弯联合下的轮胎特性进行建模。通过与实验获得的响应进行比较,验证了所提出的方法。结果表明,估计的模型与实验获得的数据非常相关。此外,所提出的神经模型允许毫无困难地将不对称轮胎行为包括在轮胎模型中。

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