Charging infrastructure is the coupling link between power and transportation networks, thus determining charging station siting is necessary for planning of power and transportation systems. While previous works have either optimized for charging station siting given historic travel behavior, or optimized fleet routing and charging given an assumed placement of the stations, this paper introduces a linear program that optimizes for station siting and macroscopic fleet operations in a joint fashion. Given an electricity retail rate and a set of travel demand requests, the optimization minimizes total cost for an autonomous EV fleet comprising of travel costs, station procurement costs, fleet procurement costs, and electricity costs, including demand charges. Specifically, the optimization returns the number of charging plugs for each charging rate (e.g., Level 2, DC fast charging) at each candidate location, as well as the optimal routing and charging of the fleet. From a case-study of an electric vehicle fleet operating in San Francisco, our results show that, albeit with range limitations, small EVs with low procurement costs and high energy efficiencies are the most cost-effective in terms of total ownership costs. Furthermore, the optimal siting of charging stations is more spatially distributed than the current siting of stations, consisting mainly of high-power Level 2 AC stations (16.8 kW) with a small share of DC fast charging stations and no standard 7.7kW Level 2 stations. Optimal siting reduces the total costs, empty vehicle travel, and peak charging load by up to 10%.
翻译:充电基础设施是电力和运输网络之间的连接环节,因此,确定电站选址是规划电力和运输系统所必需的; 虽然以前的工程已经优化了电站的充电站,根据历史旅行行为优化了充电站位位,或优化了车队路线和收费,假设了台站的位置,但本文引入了一个线性方案,优化了站站位和大型车队业务,考虑到电力零售率和一套旅行需求要求,优化了由旅行费用、车站采购费用、车队采购成本和电费(包括需求费用)构成的自动EV车队的总成本。具体地说,优化了每个收费率(例如2级,DC快速收费)的充电站的充电塞数,以及车队的最佳路线和收费。从旧金山电站的案例研究来看,我们的结果显示,尽管存在范围限制,低采购成本和高能效的小型EVEV机队在总所有权成本方面最具成本效益。 此外,最优化的充电站总坐位数(例如2级,DC快速收费站为16级)比目前高的A级电压车位高。