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Predictive control of commercial e-vehicle using a priori route information

机译:使用先验路线信息预测商业电子车辆的预测控制

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The driving range of the vehicle is usually an issue due to the limited energy storage capacity of the acu-pack. Thus, the e-vehicle control towards energy consumption decrease is of extreme importance. The known information about route properties can be used to plan torque/braking profile in an optimal way. Several approaches are compared. The first is design approach based on model predictive control (MPC) in combination with prior (before the trip starts) dynamic optimisation, the other is model-predictive control using hard limits based on route shape analyses and legal limits. The classical, optimised PID control is used as reference driver. A detailed driving range estimation model of a Fiat Doblo e-vehicle is the basis, including the main e-vehicle subsystem 1D model, e-motor, battery pack, air-conditioning/heating and EVCU. The model calibration is based on real vehicle measurements.
机译:由于ACU包的能量存储容量有限,车辆的驾驶范围通常是一个问题。 因此,电子车辆对能量消耗的控制降低了极度重要性。 关于路线特性的已知信息可用于以最佳方式规划扭矩/制动轮廓。 比较了几种方法。 第一是基于模型预测控制(MPC)的设计方法与先前(在跳闸开始之前)动态优化,另一个是使用基于路线形状分析和法律限制的硬限制的模型预测控制。 经典,优化的PID控制用作参考驱动器。 Fiat Doblo E-载体的详细驾驶范围估计模型是基础,包括主车间子系统1D模型,电子电机,电池组,空调/加热和EVCU。 模型校准基于真实的车辆测量。

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