Analysis, Modeling and Neural Network Traction Control of an Electric Vehicle without Differential Gears

A. Haddoun, M. Benbouzid, D. Diallo, R. Abdessemed, J. Ghouili, K. Srairi
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引用次数: 12

Abstract

This paper presents system analysis, modeling and simulation of an EV with two independent rear wheel drives. The traction control system is designed to guarantee the EV dynamics and stability in case of no differential gears. Using two electrics in-wheel motors give the possibility to have a torque and speed control in each wheel. This control level improves the EV stability and the safety. The proposed traction control system uses the vehicle speed, which is different from wheels speed characterized by slip in the driving mode, an input. In this case, a generalized neural network algorithm is proposed to estimate the vehicle speed. In terms of the analysis and the simulations carried out, the conclusion can be drawn that the proposed system is feasible. Simulation results on a test vehicle propelled by two 37-kW induction motors showed that the proposed control approach operates satisfactorily.
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无差速齿轮电动汽车的分析、建模及神经网络牵引力控制
本文对一种具有两个独立后轮驱动的电动汽车进行了系统分析、建模和仿真。牵引力控制系统的设计是为了保证电动汽车在无差速器情况下的动力学和稳定性。使用两个电动轮内电机可以在每个车轮上控制扭矩和速度。这种控制水平提高了电动汽车的稳定性和安全性。提出的牵引力控制系统以车辆速度作为输入,车辆速度不同于以滑移为特征的车轮速度。在这种情况下,提出了一种广义神经网络算法来估计车速。通过分析和仿真,得出了该系统是可行的结论。在两台37 kw感应电机驱动的试验车上进行了仿真,结果表明所提出的控制方法运行良好。
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