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Time Horizon-Based Model Predictive Volt/VAR Optimization for Smart Grid Enabled CVR in the Presence of Electric Vehicle Charging Loads

机译:存在电动汽车充电负荷的基于智能电网的CVR的基于时间视野的模型预测电压/无功优化

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This paper investigates the need of coordinated operation of conservation voltage reduction (CVR) in the presence of electric vehicle (EV) penetration in the active distribution network. In order to analyze the impact of both the technologies (CVR and EV), a time horizon-based model predictive Volt/VAR optimization (VVO) methodology has been introduced in smart grid framework. The proposed VVO methodology operates in centralized as well as local controls under different time scale of operation, including cloud transient effects on solar photovoltaic (PV) power output. Moreover, the control algorithms also consider the uncertainties in load demand and PV power generation. The VVO methodology has been validated with and without presence of EV loads in the distribution network. The VVO includes the impact of different EV charging loads having the ability of participation in reactive power support at selected charging points. This is also referred to as vehicle-to-grid operation in terms of reactive power dispatch only. Besides, the voltage and VAR regulation through smart inverters of PVs and EV charging station has been fruitfully utilized in global as well as local domain. A real-time Volt/VAR droop based controller has been introduced to control the smart inverters reactive power dispatch. To validate the developed methodology, a real-time cosimulation framework, using real-time digital simulator and Python interface, has been built. The proposed model predictive VVO algorithm has been tested and validated on a modified IEEE 34 bus test system. The simulated results reveal that significant CVR energy savings and losses reduction has been achieved without violating the system constraints. The voltage control algorithm works well in both slow and fast time scales.
机译:本文研究了在有源配电网中存在电动汽车(EV)渗透的情况下,协调操作守恒电压降低(CVR)的需求。为了分析这两种技术(CVR和EV)的影响,在智能电网框架中引入了基于时间范围的模型预测伏特/无功优化(VVO)方法。拟议的VVO方法在不同的运行时间范围内,既可以在集中控制中也可以在本地控制中运行,包括对太阳能光伏(PV)功率输出的云瞬变影响。此外,控制算法还考虑了负载需求和光伏发电的不确定性。在配电网中是否存在EV负载的情况下,VVO方法均已得到验证。 VVO包括具有参与选定充电点无功功率支持能力的不同EV充电负载的影响。仅在无功功率分配方面,这也称为车辆到电网运行。此外,通过光伏和电动汽车充电站的智能逆变器进行的电压和无功调节已在全球以及本地领域得到了有效利用。引入了基于实时伏特/无功下降的控制器,以控制智能逆变器的无功功率分配。为了验证所开发的方法,已经建立了使用实时数字仿真器和Python界面的实时协同仿真框架。提出的模型预测VVO算法已在改进的IEEE 34总线测试系统上进行了测试和验证。仿真结果表明,在不违反系统约束的前提下,已实现了显着的CVR节能和损耗减少。电压控制算法在慢速和快速时间尺度上都能很好地工作。

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