On Scalability of Electric Car Sharing in Smart Cities

M. Barulli, Alessandro Ciociola, M. Cocca, L. Vassio, Danilo Giordano, M. Mellia
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引用次数: 3

Abstract

In this paper we analyze which are the design options that would impact a free floating electric car sharing system performance and costs, studying how the system would scale with an increase in the intensity of the demand. We consider the case study of the city of Turin, for which we leverage hundred of thousands of actual rentals from a (combustion-based) car sharing system to derive an accurate demand model. Armed with this, we consider the transition to electric cars and the need to deploy a charging station infrastructure.Using a realistic simulator, we present the impact of system design options, like the number of charging poles, their allotment, and the number of cars. We first consider performance indicators, like fraction of satisfied demand and working hours system has to spend to bring to charge vehicles. Then we map these figures into revenues and costs, projecting economical indicators. At last, we investigate the scalability of the whole system, i.e., how performance and costs scale when the demand increases. Our results show that concentrating the charging stations in key places is instrumental to optimize car distribution in the city to better intercept the demand. Considering system scalability, the charging infrastructure must intuitively grow proportionally with the mobility demand. Interestingly instead, the fleet size can grow much slower, showing some nice economy of scale gains.
智慧城市电动汽车共享的可扩展性研究
本文分析了影响自由浮动式电动汽车共享系统性能和成本的设计选项,研究了系统如何随着需求强度的增加而扩展。我们考虑了都灵市的案例研究,我们利用来自(基于燃烧的)汽车共享系统的数十万次实际租赁来获得准确的需求模型。有了这个,我们考虑向电动汽车的过渡以及部署充电站基础设施的必要性。使用逼真的模拟器,我们展示了系统设计选项的影响,如充电桩的数量,它们的分配和汽车的数量。我们首先考虑性能指标,如满足需求的比例和系统必须花费的工作时间来为车辆充电。然后我们将这些数字映射成收入和成本,预测经济指标。最后,我们研究了整个系统的可扩展性,即当需求增加时,性能和成本如何扩展。研究结果表明,将充电站集中在重点场所有助于优化城市车辆分布,更好地拦截需求。考虑到系统的可扩展性,充电基础设施必须直观地与出行需求成比例增长。有趣的是,船队规模的增长速度可能会慢得多,显示出一些不错的规模经济收益。
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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