Collaborative Vehicle-to-Grid Operations in Frequency Regulation Markets

Ho‐Yin Mak, Runyu Tang
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Abstract

Problem definition: We study the operations of electric vehicles (EVs) providing frequency regulation services to the electric grid in vehicle-to-grid (V2G) systems. In particular, individually owned EVs collaboratively bid in the regulation market, coordinated by a platform that operates the network of charging equipment. We study how the platform determines optimal pricing incentives for drivers to plug in their EVs, accounting for heterogeneous driving schedules. Methodology/results: We model the platform’s pricing optimization problem as a bilevel program: At the upper level, the platform determines hourly rebates for EV owners to plug in their EVs and capacity bids in the regulation market; at the lower level, individual travelers optimize their travel and charging schedules in response to pricing incentives. To account for uncertainties and heterogeneity in regulation market prices and travel patterns, we adopt distributionally robust optimization techniques to formulate the problem as a mixed-integer second-order cone program. We conduct a computational study based on the California Household Travel Survey data set and actual frequency regulation prices. Our results show that the ability to offer time-varying rebates and install workplace chargers can significantly improve the V2G platform’s expected profits. Managerial implications: As EV adoption progresses past the nascent stage, V2G business models become more viable. Successful implementation of V2G provides economic incentive for switching to EVs, potentially helps sustain adoption growth, and complements the growth of renewable power by helping stabilize the grid. Our findings shed light on the design of driver incentives for V2G systems. Funding: R. Tang acknowledges support from the National Natural Science Foundation of China [Grant 72201206]. Supplemental Material: The online appendices are available at https://doi.org/10.1287/msom.2022.0133 .
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频率调节市场中的车联网协作运行
问题定义:我们研究在车对网(V2G)系统中为电网提供频率调节服务的电动汽车(EV)的运行。特别是,在充电设备网络运营平台的协调下,个人拥有的电动汽车在调频市场上协同竞价。我们研究了该平台如何在考虑到不同驾驶时间表的情况下,为驾驶员插入电动汽车确定最优定价激励。方法/结果:我们将平台的定价优化问题建模为一个两级程序:在上层,平台确定电动汽车车主插入电动汽车的每小时回扣以及调节市场的容量出价;在下层,个人旅行者根据定价激励措施优化其旅行和充电时间表。为了考虑调控市场价格和出行模式的不确定性和异质性,我们采用了分布稳健优化技术,将问题表述为混合整数二阶锥形程序。我们基于加州家庭出行调查数据集和实际频率调节价格进行了计算研究。我们的结果表明,提供随时间变化的返利和安装工作场所充电器的能力可以显著提高 V2G 平台的预期利润。管理意义:随着电动汽车的采用逐渐渡过萌芽阶段,V2G 商业模式变得更加可行。V2G 的成功实施为转向电动汽车提供了经济激励,可能有助于维持采用率的增长,并通过帮助稳定电网来补充可再生能源的增长。我们的研究结果为设计 V2G 系统的驱动激励机制提供了启示。资助:R. Tang 感谢国家自然科学基金项目[批准号:72201206]的支持。补充材料:在线附录见 https://doi.org/10.1287/msom.2022.0133 。
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