Finding optimal deceleration with serial regenerative braking of electric vehicle using a multi-objective genetic algorithm

D. Chakraborty, A. Nandi
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引用次数: 9

Abstract

To improve the fuel economy and range of an electric vehicle, as much as energy regeneration during braking is important. It was observed that driving harshness has a great impact on the regeneration efficiency during vehicle deceleration. On the other hand, to reduce the trip time as well as to avoid accident, the deceleration duration needs to be kept short. By realizing these conflicting objectives, in the present work an optimal deceleration is find out for a speed change using a genetic algorithm. The concerned multi-objective optimization problem (MOOP) was solved based on two approaches: considering a constant deceleration, and variable decelerations during braking. Comparative results of both the approaches are presented for a representative speed change in four driving cycles. Results of both approaches in solving the MOOP including under certain constraints, such as a desired comfort journey and maintaining a safe braking distance, suggest that multiple decelerations should be used during planned braking, where as either a constant or multiple deceleration may be taken during braking for high comfort journey and under emergency braking demand.
采用多目标遗传算法求解电动汽车串联再生制动的最优减速度
为了提高电动汽车的燃油经济性和行驶里程,制动过程中的能量再生非常重要。研究发现,在车辆减速过程中,驾驶粗糙度对再生效率有很大影响。另一方面,为了减少行程时间和避免事故,减速时间需要保持短。通过实现这些相互冲突的目标,本文采用遗传算法找出变速时的最优减速度。采用恒减速和变减速两种方法求解了多目标优化问题(MOOP)。在四个行驶工况下,给出了两种方法的比较结果。两种方法求解MOOP的结果,包括在一定的约束条件下,如期望的舒适行程和保持安全的制动距离,表明在计划制动时应使用多次减速,而在高舒适行程和紧急制动需求下,制动时可以采取恒定或多次减速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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