V2G Potential Estimation and Optimal Discharge Scheduling for MMC-based Charging Stations

E. Gümrükcü, Harshvardhan Samsukha, F. Ponci, A. Monti, G. Guidi, S. D'arco, J. Suul
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引用次数: 1

Abstract

This paper investigates the vehicle-to-grid (V2G) potential of the large scale electric vehicle (EV) charging infrastructures where the grid-side interface is based on a Modular Multilevel Converter (MMC). In this topology, each phase of the grid-side interface consists of two arms, each of which accommodates a number of bidirectional EV chargers. Heterogeneous connection and disconnection of EVs with different State-of-Charge (SOC) may lead to unbalanced power flow among the MMC arms. Although the studied MMC topology can tolerate limited unbalances in the loading, extreme unbalances must be prevented to limit the internal current amplitudes and avoid increased losses. Due to such unbalance limitations, the feasible V2G potential of the overall system can be smaller than the summation of individual discharge potentials of the participating EV batteries. The algorithm presented in this paper estimates the feasible V2G potential of the MMC-based system over a time window by the help of a mathematical optimization model. This model maximizes the aggregated discharge potential of the overall system by scheduling the discharge profiles of individual EV batteries while respecting the unbalance constraints of the MMC topology. Furthermore, this model is able to schedule the discharging activities in such a way that the priorities of the EV users in this regard are considered while the entire feasible V2G potential of the overall system is utilized.
基于mmc的充电站V2G电位估计与最优放电调度
本文研究了大型电动汽车(EV)充电基础设施的车辆到电网(V2G)潜力,其中电网侧接口基于模块化多电平转换器(MMC)。在这种拓扑结构中,电网侧接口的每个相位由两个臂组成,每个臂容纳许多双向电动汽车充电器。不同荷电状态(SOC)电动汽车的异质连接和断开可能导致MMC臂之间的功率流不平衡。虽然所研究的MMC拓扑结构可以承受负载中的有限不平衡,但必须防止极端不平衡以限制内部电流幅值并避免增加损耗。由于这种不平衡的限制,整个系统的可行V2G电势可能小于参与的电动汽车电池单个放电电势的总和。本文提出的算法借助数学优化模型对基于mmc的系统在一个时间窗口内的可行V2G电位进行估计。该模型在尊重MMC拓扑不平衡约束的前提下,通过调度单个电池的放电曲线,使整个系统的总放电电位最大化。此外,该模型能够在利用整个系统的整个可行V2G潜力的同时,考虑电动汽车用户在这方面的优先级来安排放电活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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