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Adaptive model predictive traction control for electric vehicles

机译:电动汽车的自适应模型预测牵引力控制

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With the recent emergence of electric powertrains, a faster and easy to model actuator, the electric motor, became available for the control of longitudinal dynamics. Therefore model-based control approaches promise an increase in control performance, especially for processes such as traction control that require highly dynamic control intervention. The task of traction controllers is to prevent the driven wheels from slipping and thus ensure the vehicle's steerability. In this paper, a model predictive control approach to traction control is developed. A semi implicit method to discretize the underlying model was proposed to handle numerical stability problems at low speeds in real time. Due to changing environmental conditions, the functionality of the traction controller is limited and may lead to performance degradation or even failure. Therefore, a maximum friction coefficient estimation utilizing an unscentend Kalman filter is integrated. The overall control scheme is experimentally evaluated with a Volkswagen Golf GTE Plug-In Hybrid on a test track with a wet steel road surface.
机译:随着最近的电动动力驱动,更快且易于模型执行器,电动机可用于控制纵向动态。因此,基于模型的控制方法承诺增加控制性能,特别是对于需要高度动态控制干预的牵引控制等过程。牵引力控制器的任务是防止从动车轮滑动,从而确保车辆的可操纵性。在本文中,开发了一种模型预测控制方法的牵引控制。提出了一种离散模型来离散模型的半隐式方法,以实时处理低速下的数值稳定性问题。由于环境条件不断变化,牵引力控制器的功能有限,可能导致性能下降甚至失败。因此,集成了利用UnsCentend卡尔曼滤波器的最大摩擦系数估计。通过湿钢路面的测试轨道上用Volkswagen Golf GTE插入式混合进行实验评估整体控制方案。

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