Artificial Neural Networks: A Promising Tool for Regenerative Braking Control in Electric Vehicles

Mohamed Rezk, Hoda Abuzied
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Abstract

Regenerative braking systems (RBS) are a promising technology for recovering wasted kinetic energy during the braking process of electric vehicles. This energy can be stored in the vehicle’s battery for later use, reducing fuel consumption, prolonging travel distances, and reducing maintenance costs. RBS is particularly beneficial in heavy traffic, where the brakes are used more frequently. In this research, an artificial neural network (ANN) model was developed to predict the amount of the recovered current and stoppage time needed for different braking scenarios. The ANN model was trained using data from a developed MATLAB Simulink model that was used to investigate the effects of braking force capacity and vehicle running speed on RBS performance. The performance of the RBS was evaluated in terms of the amount of recovered current and the time needed for the vehicle to come to rest. The outputs from the Simulink model were validated statistically using Design Expert ANOVA analysis before being implemented in the ANN model. The results of this study showed that the ANN model was able to accurately predict the amount of the recovered current and the stoppage time needed for different braking scenarios. Hence ANN models can be considered an accurate flexible model that can be used to develop efficient and effective RBS controllers for electric vehicles.
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人工神经网络:一种有前途的电动汽车再生制动控制工具
再生制动系统(RBS)是一种很有前途的技术,用于回收电动汽车制动过程中浪费的动能。这种能量可以储存在车辆的电池中供以后使用,减少燃料消耗,延长行驶距离,降低维护成本。在繁忙的交通中,刹车使用得更频繁,RBS尤其有用。在本研究中,建立了一种人工神经网络(ANN)模型来预测不同制动场景下所需的恢复电流量和停机时间。利用开发的MATLAB Simulink模型的数据对人工神经网络模型进行训练,该模型用于研究制动力容量和车辆运行速度对RBS性能的影响。RBS的性能是根据恢复电流的量和车辆停下来所需的时间来评估的。Simulink模型的输出在ANN模型中实现之前,使用Design Expert ANOVA分析进行统计验证。研究结果表明,该人工神经网络模型能够准确预测不同制动场景下的恢复电流量和停车时间。因此,人工神经网络模型可以被认为是一种精确的灵活模型,可以用于开发高效的电动汽车RBS控制器。
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