考虑再生制动的基于遗传算法的电动汽车生态驾驶方法

Mukesh Gautam, N. Bhusal, M. Benidris, P. Fajri
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引用次数: 4

摘要

随着零排放交通技术,特别是电动汽车(ev)的日益普及,其生态驾驶的概念受到了极大的关注。针对传统内燃机汽车不具备再生制动能力的生态驾驶技术,提出了一种基于遗传算法的考虑再生制动的电动汽车生态驾驶技术。该方法利用遗传算法搜索电动汽车行驶循环中变量的最优或近最优组合。提出的方法首先生成一个初始的染色体种群,其中考虑的所有变量都编码在每个染色体中。这个染色体群体在一定数量的世代中通过交叉、突变和基于精英的选择来传递,这导致了一个能量消耗最少的驱动循环。通过两种驱动工况的实例研究验证了该方法的有效性。结果表明,该方法具有计算最小能量行驶周期的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A GA-based Approach to Eco-driving of Electric Vehicles Considering Regenerative Braking
As the deployment of zero emission transportation technologies, specifically electric vehicles (EVs), is increasing, the concept of their eco-driving is gaining significant attention. Contrary to the eco-driving techniques used in conventional internal combustion engine vehicles that do not have the capability of regenerative braking, this paper proposes a genetic algorithm (GA)-based eco-driving technique for EVs considering regenerative braking. In the proposed approach, the optimal or near-optimal combination of variables in the driving cycle of EVs is searched using GA. The proposed approach starts by generating an initial population of chromosomes, where all variables under consideration are encoded in each chromosome. This population of chromosomes is passed through crossover, mutation, and elitist-based selection over a certain number of generations, which results in a driving cycle with the least energy consumption. The proposed method is verified using case studies consisting of two types of driving cycles. The results show the capability of the proposed method in computing the minimum energy driving cycle.
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