Photovoltaic integration in smart city power distribution: A probabilistic photovoltaic hosting capacity assessment based on smart metering data

V. Klonari, J. Toubeau, J. Lobry, F. Vallée
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引用次数: 23

Abstract

Maximizing the share of renewable resources in the electric energy supply is a major challenge in the design of smart cities. Concerning the smart city power distribution, the main focus is on the Low Voltage (LV) level in which distributed Photovoltaic (PV) units are the mostly met renewable energy systems. This paper demonstrates the usefulness of smart metering (SM) data in determining the maximum photovoltaic (PV) hosting capacity of an LV distribution feeder. Basically, the paper introduces a probabilistic tool that estimates PV hosting capacity by using user-specific energy flow data, recorded by SM devices. The probabilistic evaluation and the use of historical SM data yield a reliable estimation that considers the volatile character of distributed generation and loads as well as technical constraints of the network (voltage magnitude, phase unbalance, congestion risk, line losses). As a case study, an existing LV feeder in Belgium is analysed. The feeder is located in an area with high PV penetration and large deployment of SM devices. The estimated PV hosting capacity is proved to be much higher than the one obtained with a deterministic worst case approach, considering voltage margin (magnitude and unbalance).
智慧城市配电中的光伏集成:基于智能计量数据的光伏托管容量概率评估
最大限度地提高可再生能源在电力供应中的份额是智慧城市设计的主要挑战。在智慧城市配电方面,主要关注的是低压(LV)水平,其中分布式光伏(PV)机组是满足最多的可再生能源系统。本文论证了智能计量(SM)数据在确定低压配电馈线的最大光伏(PV)承载容量方面的有用性。基本上,本文介绍了一种概率工具,该工具通过使用SM设备记录的用户特定能量流数据来估计PV托管容量。概率评估和历史SM数据的使用产生了一个可靠的估计,该估计考虑了分布式发电和负载的不稳定特性以及网络的技术限制(电压大小、相位不平衡、拥塞风险、线路损耗)。以比利时现有的低压馈线为例进行了分析。馈线位于光伏渗透率高、SM设备部署大的地区。在考虑电压裕度(幅度和不平衡)的情况下,估计的PV托管容量被证明比使用确定性最坏情况方法获得的容量要高得多。
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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