考虑电动汽车的微电网簇能量交易鲁棒优化

Fei Feng, Du Xin
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引用次数: 0

摘要

为应对大规模电动汽车接入微电网带来的诸多挑战,针对现有电动汽车调度策略对电动汽车充放电需求考虑不足的问题,提出了一种两阶段微电网集群协同优化方法,利用停车发电率实现电动汽车有序充电。提出了一种两阶段自适应鲁棒优化协同调度方法。第一阶段主要是利用停车发电率参数实现电动汽车的有序充放电,第二阶段是对改进的多面体不确定集进行风、光伏和电动汽车的描述。通过变换KKT最优性条件,采用列约束生成算法(C&CG)对优化模型进行有效求解。仿真结果表明,基于停车发电率的电动汽车有序充电策略可以有效避免因大量电动汽车接入微电网而导致的负荷尖峰问题,为电网提供调峰补谷服务,实现用户与微电网的双赢。同时,多个微网的使用可以有效减少微网与电网之间的交易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Optimization for Energy Transactions in Microgrid Cluster (MC) Considering Electric Vehicle (EV)
In order to cope with the many challenges brought by the large-scale electric vehicles (EVs) access to the microgrid, in view of the insufficient consideration of the existing EV disptaching strategy for the charging and discharging requirements of EVs, a two-stage microgrid cluster (MC) collaborative optimization was proposed, which uses the parking generation rate to realize the orderly charging of electric vehicles. In this paper, a two-stage adaptive robust optimization cooperative operation method in MC is proposed. The first stage is mainly to use the parking generation rate parameter to achieve orderly charging and discharging of EVs, and the second stage is to describe wind, photovoltaic (PV) and EVs for the improved polyhedral uncertain set. By transforming the KKT optimality conditions, the column constraint generation algorithm (C&CG) is used to solve the optimization model effectively. Case studies verify the effectiveness of the proposed model and evaluate the benefits of energy trading in MC. The simulation results show that the orderly charging strategy of EVs based on the parking generation rate can effectively avoid the problem of load spikes caused by a large number of EVs connected to the microgrid, provide the grid with peak-shaving and valley-filling services, and achieve a win-win situation for users and microgrids. At the same time, the use of multiple-microgrid can effectively reduce the transactions between microgrids and the power grid.
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