论文标题

充电站最大化福利最大化的两阶段连接计划

A Two-phase On-line Joint Scheduling for Welfare Maximization of Charging Station

论文作者

Huang, Qilong, Jia, Qing-Shan, Wu, Xiang, Xu, Shengyuan, Guan, Xiaohong

论文摘要

电动汽车的大量采用给充电站的运营优化带来了实际利益。定价和充电控制的联合安排将为充电站和电动汽车驾驶员带来双赢,从而提高了车站的运营能力。我们在本文中考虑了这个重要的问题,并做出了以下贡献。首先,考虑到服务质量和电动汽车驱动程序的价格波动敏感性,开发了定价和充电控制的联合调度模型。它被称为马尔可夫决策过程,具有差异标准,可在操作过程中捕获不确定性。其次,提出了两阶段的在线政策学习算法来解决这个联合调度问题。在第一阶段,它实现了基于事件的策略迭代以找到最佳定价方案,而在第二阶段,它在更新的定价方案下实现了基于方案的智能充电模型预测控制。第三,通过利用性能差异理论,理论上分析了所提出的算法的最佳性。具有分布式生成和储能的充电站的数值实验证明了该方法的有效性以及充电站的社会福利改善。

The large adoption of EVs brings practical interest to the operation optimization of the charging station. The joint scheduling of pricing and charging control will achieve a win-win situation both for the charging station and EV drivers, thus enhancing the operational capability of the station. We consider this important problem in this paper and make the following contributions. First, a joint scheduling model of pricing and charging control is developed to maximize the expected social welfare of the charging station considering the Quality of Service and the price fluctuation sensitivity of EV drivers. It is formulated as a Markov decision process with variance criterion to capture uncertainties during operation. Second, a two-phase on-line policy learning algorithm is proposed to solve this joint scheduling problem. In the first phase, it implements event-based policy iteration to find the optimal pricing scheme, while in the second phase, it implements scenario-based model predictive control for smart charging under the updated pricing scheme. Third, by leveraging the performance difference theory, the optimality of the proposed algorithm is theoretically analyzed. Numerical experiments for a charging station with distributed generation and energy storage demonstrate the effectiveness of the proposed method and the improved social welfare of the charging station.

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