电网约束下自主控制电动汽车充电器的风能充电

Simone Striani, Kristian Sevdari, M. Marinelli, Vasileios Lampropoulos, Yuki Kobayashi, Kenta Suzuki
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引用次数: 1

摘要

智能充电具有巨大的潜力,可以缓解因对可再生能源(RESs)和电动汽车(ev)的日益依赖而带来的供应安全挑战。本文描述了一种用于协调虚拟电厂中四个停车场收费的自主分布式控制系统的性能。这个虚拟发电厂由一个风电场和四个停车场组成,这些停车场位于电网的不同区域,并连接到两个不同的馈线。该控制体系结构应用于24小时模拟,其中输入数据来自风力发电场,两个馈线的负载数据以及来自68辆电动汽车的用户行为。该架构的目标是:最大限度地利用风能为电动汽车充电;尽量减少馈线过载;最小化从电网输入的能量;保证充分履行收费;减少风力发电的可变性。在仿真条件下,控制体系结构通过减少高峰需求时停车场的功率余量,使馈线负荷保持在80%以下。尽管如此,这四个停车场保证了所有充电时电量低于60%的电动汽车充电10.7千瓦时。风力发电厂的总发电量为4.36兆瓦时,其中1.34兆瓦时用于电动汽车充电。剩余的3.07兆瓦时输出到电网,只有92千瓦时从电网输入充电。由于在模拟条件下,风力发电变率的减少只是边际的,因此需要进一步调查。
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Wind Based Charging via Autonomously Controlled EV Chargers under Grid Constraints
Smart charging has a strong potential to mitigate the challenges in security of supply caused by the increasing reliance on renewable energy sources (RESs) and electric vehicles (EVs). This paper describes the performances of an autonomous distributed control for coordinating the charge of four parking lots as part of a virtual power plant. The virtual power plant consists of a wind farm and four parking lots located in different areas of the grid and connected to two different feeders. The control architecture is applied to a 24-hour simulation with input data from a wind park, the loading data of two feeders, and user behavior from 68 EVs. The objectives of the architecture are: maximization of the wind power usage to charge the EVs; minimization of feeders overloading; minimization of energy imported from the grid; assurance of sufficient charging fulfillment; wind power variability mitigation. Under simulated conditions, the control architecture keeps the feeder loading below 80% by reducing the power allowance to the parking lot during peak demand. Nonetheless the four parking lots guarantee an energy charged of 10.7 kWh for all EVs starting the charging session with less than 60% state of charge (SOC). The total energy produced by the wind power plant is 4.36 MWh, of which 1.34 MWh is used to charge EVs. The remaining 3.07 MWh is exported to the grid, and only 92 kWh is imported from the grid for charging. Further investigation is needed regarding the wind power variability mitigation, as its reduction is only marginal under simulated conditions.
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