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Stochasticity and environmental cost inclusion for electric vehicles fast-charging facility deployment

机译:电动车辆快速充电设施部署的随机性和环境成本融合

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摘要

This study aims to seek the optimal deployment of fast-charging stations concerning the traffic flow equilibrium and various realistic considerations to promote Electric Vehicles (EVs) widespread adoption. A bi-level optimization framework has been developed in which the upper level aims to minimize the total system cost (i.e., capital cost, travel cost, and environmental cost). Meanwhile, the lower level captures travellers' routing behaviours with stochastic demands and driving range limitation. A meta-heuristic approach has been proposed, combining the Cross-Entropy Method and the Method of Successive Average to solve the problem. Finally, numerical studies are conducted to demonstrate the proposed framework's performance and provide insights into the impact of uncertain driving range and charging congestion on the planning decision and the system performance. Generally, both on-route congestion and charging congestion tend to be more serious when there are more EVs in the network; however, the system performance can be improved by increasing EVs' driving range limitation and providing appropriate charging infrastructure.
机译:本研究旨在寻求有关交通流量平衡和各种现实考虑的快速充电站的最佳部署,以促进电动车辆(EVS)广泛采用。已经开发了双级优化框架,其中上层旨在最大限度地减少总系统成本(即,资本成本,旅行费用和环境成本)。同时,较低级别捕获旅行者的路由行为随随机需求和驾驶范围限制。已经提出了元启发式方法,结合了跨熵方法和连续平均方法来解决问题。最后,进行了数值研究以展示所提出的框架的性能,并对不确定的驾驶范围和充电充电的影响提供了对规划决策的影响和系统性能。一般来说,当网络中有更多EVS时,在路由中拥塞和充电充电往往更严重;然而,通过增加EVS的驾驶范围限制并提供适当的充电基础设施,可以提高系统性能。

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