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Intelligent traction control in electric vehicles using an acoustic approach for online estimation of road-tire friction

机译:使用声学方法的电动汽车智能牵引力控制,在线估算道路轮胎摩擦

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Torque control of electric motor via current gives the advantage of simplicity and fast response over the complicated torque control of an internal combustion engine which may depend on several parameters ranging from fuel valve angle to gas pedal position and several delay factors. Although traction control system (TCS) for in-wheel-motor (IWM) configuration electric vehicles (EV) has advantages, the performance of the control system, as in most traction control cases, still depends on (1)accurate estimation of road-tire friction characteristics and (2) measurement of slip ratio requiring expensive sensors for obtaining wheel and chassis velocity. The main contribution of this work is design and integration of an acoustic road-type estimation system (ARTE), which significantly increases the robustness and reduces the cost of TCS in IWM configuration EVs. Unlike complicated and expensive sensor units, the system uses a simple data collection set-up including a low-cost cardioid microphone directed to vicinity of road-tire interface. The acoustic data is then reduced to features such as linear predictive, cepstrum and power spectrum coefficients. For robust estimation, only some of these coefficients are selected based on minimum intra-class variance and maximum inter-class distance criteria to train an artificial neural network (ANN) for classification. The road types can be grouped into: Asphalt, gravel, stone and snow with a correct classification rate of 91% for the test data. The predicted road-type is used to select the correct friction characteristic curve (μ-λ) which helps calculating the appropriate torque command for the particular road-tire condition. The system has been evaluated in extensive simulations and the results show that extreme torque values are supressed stabilising the vehicle for several driving scenarios in a more energy-efficient and robust manner compared to previous systems.
机译:与电流的复杂转矩控制相比,通过电流的电动机的转矩控制具有简单和快速响应的优点,内燃机的转矩控制可能取决于从燃料阀角度到油门踏板位置的几个参数以及几个延迟因子。尽管用于轮毂电机(IWM)配置的电动汽车(EV)的牵引力控制系统(TCS)具有优势,但与大多数牵引力控制情况一样,该控制系统的性能仍取决于(1)道路行驶情况的准确估算轮胎摩擦特性和(2)滑移率的测量需要昂贵的传感器才能获得车轮和底盘速度。这项工作的主要贡献是设计和集成了声路类型估计系统(ARTE),这大大提高了IWM配置EV中的鲁棒性并降低了TCS的成本。与复杂且昂贵的传感器单元不同,该系统使用简单的数据收集设置,包括指向道路轮胎接口附近的低成本心形麦克风。然后,将声学数据简化为线性预测,倒谱和功率谱系数等特征。为了进行稳健的估计,仅根据最小的类内方差和最大的类间距离标准选择这些系数中的一些,以训练人工神经网络(ANN)进行分类。道路类型可以分为:沥青,砾石,石头和积雪,对于测试数据,正确的分类率为91%。预测的道路类型用于选择正确的摩擦特性曲线(μ-λ),这有助于为特定的道路轮胎状况计算适当的扭矩指令。该系统已在广泛的仿真中进行了评估,结果表明,与以前的系统相比,极限扭矩值在多种驾驶情况下均能稳定车辆,从而更加节能高效。

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