With the rapid acceleration of transportation electrification, public charging stations are becoming vital infrastructure in a smart sustainable city to provide on-demand electric vehicle (EV) charging services. As more consumers seek to utilize public charging services, the pricing and scheduling of such services will become vital, complementary tools to mediate competition for charging resources. However, determining the right prices to charge is difficult due to the online nature of EV arrivals. This paper studies a joint pricing and scheduling problem for the operator of EV charging networks with limited charging capacity and time-varying energy cost. Upon receiving a charging request, the operator offers a price, and the EV decides whether to admit the offer based on its own value and the posted price. The operator then schedules the real-time charging process to satisfy the charging request if the EV admits the offer. We propose an online pricing algorithm that can determine the posted price and EV charging schedule to maximize social welfare, i.e., the total value of EVs minus the energy cost of charging stations. Theoretically, we prove the devised algorithm can achieve the order-optimal competitive ratio under the competitive analysis framework. Practically, we show the empirical performance of our algorithm outperforms other benchmark algorithms in experiments using real EV charging data.
翻译:随着交通电气化的快速加速,公共收费站正在成为一个智能可持续城市的重要基础设施,以提供点电电动车辆收费服务。随着更多的消费者寻求利用公共收费服务,这类服务的定价和时间安排将变得至关重要、补充性工具,以调节资源收费的竞争。然而,由于EV抵达者的在线性质,确定正确的收费价格是困难的。本文研究了EV充电网络操作者联合定价和日程安排问题,其充电能力和能源成本都有限。在收到收费请求后,操作者提供价格,而EV则根据自己的价值和已上市价格决定是否接受报价。操作者然后安排实时收费程序,以便在EV接受报价时满足收费要求。我们提出在线定价算法,以确定已上市的价格和EV收费时间表,从而最大限度地提高社会福利,即EV的总值减去收费站的能源成本。从理论上讲,我们证明所设计的算算法能够达到竞争性分析框架下的定价最佳竞争比率。我们用实际的算法模型来显示我们其他实验性数据模型的演算法。