Despite the dependency of electric vehicle (EV) fleets on charging station availability, charging infrastructure remains limited in many cities. Three contributions are made. First, we propose an EV-to-charging station user equilibrium (UE) assignment model with a M/D/C queue approximation as a nondifferentiable nonlinear program. Second, to address the non-differentiability of the queue delay function, we propose an original solution algorithm based on the derivative-free Method of Successive Averages. Computational tests with a toy network show that the model converges to a UE. A working code in Python is provided free on Github with detailed test cases. Third, the model is applied to the large-scale case study of New York City Department of Citywide Administrative Services (NYC DCAS) fleet and EV charging station configuration as of July 8, 2020, which includes unique, real data for 563 Level 2 chargers and 4 Direct Current Fast Chargers (DCFCs) and 1484 EVs distributed over 512 Traffic Analysis Zones. The arrival rates of the assignment model are calibrated in the base scenario to fit an observed average utilization ratio of 7.6% in NYC. The model is then applied to compare charging station investment policies of DCFCs to Level 2 charging stations based on two alternative criteria. Results suggest a policy based on selecting locations with high utilization ratio instead of with high queue delay.
翻译:尽管电动车辆(EV)车队依赖收费站供应量,但许多城市的收费基础设施仍然有限。有三种贡献:首先,我们提议以M/D/C队列近似值为无差别的非线性程序,采用EV-到C队列队列近点分配模式。第二,为了解决排队延迟功能的无差别性,我们提议基于无衍生物的连续平均平均数方法的原始解决方案算法。与一个玩具网络的计算测试显示,该模式与UE相匹配。在吉特布市免费提供了Python州的工作代码,并附有详细的测试案例。第三,该模式适用于纽约市全市行政服务部车队和EVCFC充电站配置的大规模案例研究,截至2020年7月8日,其中包括563个二级充电机和4个直流快速充电器(DCFCFCs)的独特、真实数据,分布在512个交通分析区之间的1484种EVs。 派模式的到达率模式在基底图中与高额使用率标准相比,在采用基于高额使用率标准。