论文标题
一种用于充电设施的动态服务计划的游戏理论方法
A Game-theoretic Approach for Dynamic Service Scheduling at Charging Facilities
论文作者
论文摘要
电动汽车(EV)充电模式在位置,时间和持续时间均高度不确定,尤其是与未来对电动迁移率的高需求有关。可以在家里,在高速公路坡道附近的充电站或办公楼,商店,机场等停车场上收取电动汽车。充电时间和持续时间可以固定,连续,灵活和间歇性。电动汽车用户对充电服务的偏好取决于许多因素(例如,充电价格,目的地的选择),导致电动汽车充电模式实时转移。因此,需要一个高度灵活的电动汽车充电网络来支持该技术的快速采用。这项研究提出了一种动态调度方案,用于考虑在充电需求,充电器可用性和充电率方面的不确定性考虑电动汽车充电设施。该问题被称为动态编程模型,可将旅行和等待费用和充电费用最小化,同时惩罚过度收费的尝试。引入了一种集成的广义NASH平衡技术来解决结合蒙特卡洛树搜索算法的问题,以有效地捕获不确定性并近似动态程序的价值函数。关于假设和现实世界网络的数值实验证实了所提出方法的解决方案质量和计算效率。这项研究将通过实时,用户自适应优化器来帮助用户降低充电点搜索负担,从而促进电动汽车的采用和支持环境可持续性。利益相关者可以检索充电器利用率和定价数据,并获得有关其充电网络政策的反馈。
Electric vehicle (EV) charging patterns are highly uncertain in both location, time, and duration particularly in association with the predicted high demand for electric mobility in the future. An EV can be charged at home, at charging stations near highway ramps, or on parking lots next to office buildings, shops, airports, among other locations. Charging time and duration can be fixed and continuous or flexible and intermittent. EV user preferences of charging services depend on many factors (e.g., charging prices, choice of destinations), causing EV charging patterns to shift in real-time. Hence, there is a need for a highly flexible EV charging network to support the rapid adoption of the technology. This study presents a dynamic scheduling scheme for EV charging facilities considering uncertainties in charging demand, charger availability, and charging rate. The problem is formulated as a dynamic programming model that minimizes the travel and waiting costs and charging expenses while penalizing overcharging attempts. An integrated generalized Nash equilibrium technique is introduced to solve the problem that incorporates a Monte Carlo tree search algorithm to efficiently capture the uncertainties and approximate the value function of the dynamic program. Numerical experiments on hypothetical and real-world networks confirm the solution quality and computational efficiency of the proposed methodology. This study will promote EV adoption and support environmental sustainability by helping users lower the charging spot search burden via a real-time, user-adaptive optimizer. Stakeholders can retrieve charger utilization and pricing data and get feedback on their charging network policies.