利用V2G优化住宅能源消耗与电动汽车(不)充电

Kevin Mets, Tom Verschueren, F. de Turck, Chris Develder
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引用次数: 84

摘要

可插电(混合)电动汽车(phev)的潜在突破将给电网带来各种挑战,特别是意味着电网负荷的显著增加。充分处理这些插电式混合动力车是智能电网面临的挑战和机遇之一。特别是,充电过程的智能控制策略可以显著缓解预期的峰值负荷增加,例如住宅车辆在家中充电。此外,连接到电网的汽车电池也可以用于提供电网服务,特别是将储存的能量回馈给电网,以帮助应对来自家用电器的高峰需求。在本文中,我们将解决所谓的车辆到电网(V2G)场景,同时考虑在住宅场景中优化插电式混合动力充电。特别是,我们将评估最佳的汽车电池(非)充电计划,以实现调峰和减少连接到本地配电网的家庭负荷(随时间)的变化。我们比较了(i)没有任何智能充电的常规业务(BAU)场景,(ii)没有V2G的智能本地充电优化,以及(iii)有V2G的充电优化。为了评估这些场景,我们使用了基于omnet++的仿真工具,该工具结合了ICT和电网模型,并结合了一个Matlab模型,可以评估电压违例。在一个涵盖63个家庭的三馈线配电网的案例研究中,我们观察到非v2g优化充电与BAU相比可以减少64%的峰值需求。如果我们将V2G应用到智能充电中,我们可以进一步减少17%的非V2G峰值需求(即实现峰值负荷仅为BAU的30%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting V2G to optimize residential energy consumption with electrical vehicle (dis)charging
The potential breakthrough of pluggable (hybrid) electrical vehicles (PHEVs) will impose various challenges to the power grid, and esp. implies a significant increase of its load. Adequately dealing with such PHEVs is one of the challenges and opportunities for smart grids. In particular, intelligent control strategies for the charging process can significantly alleviate peak load increases that are to be expected from e.g. residential vehicle charging at home. In addition, the car batteries connected to the grid can also be exploited to deliver grid services, and in particular give stored energy back to the grid to help coping with peak demands stemming from e.g. household appliances. In this paper, we will address such so-called vehicle-to-grid (V2G) scenarios while considering the optimization of PHEV charging in a residential scenario. In particular, we will assess the optimal car battery (dis)charging scheduling to achieve peak shaving and reduction of the variability (over time) of the load of households connected to a local distribution grid. We compare (i) a business-as-usual (BAU) scenario, without any intelligent charging, (ii) intelligent local charging optimization without V2G, and (iii) charging optimization with V2G. To evaluate these scenarios, we make use of our simulation tool, based on OMNeT++, which combines ICT and power network models and incorporates a Matlab model that allows e.g. assessing voltage violations. In a case study on a three-feeder distribution network spanning 63 households, we observe that non-V2G optimized charging can reduce the peak demand compared to BAU with 64%. If we apply V2G to the intelligent charging, we can further cut the non-V2G peak demand with 17% (i.e., achieve a peak load which is only 30% of BAU).
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