Phase Identification in Smart Grids – Case Study

Q4 Energy
Lluc Crespí-Castañer, M. Roca, J. Rosselló, Lluís Juncosa, Vicente Canals
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引用次数: 0

Abstract

. A widespread problem of the electricity distribution system is determining to which phase a consumer is connected. Generally, utility companies did not record the distribution of the phases over time, which is essential to address the problem of unbalanced voltage distribution networks. In addition, manual phase identification is not feasible due to its high cost. The massive deployment of smart meters allowed periodic readings of energy consumption, voltage, current, etc. Out of this large amount of data, several techniques based on machine learning have emerged, addressing the problem of phase identification automatically while maintaining the existing infrastructure. Hence, phase identification is essential for developing smart-grid solutions. In the present work, we applied an unsupervised machine-learning technique that allows the classification of the time-voltage series recorded by the smart meters of a low-voltage three-phase radial distribution network located in the Balearic Islands (Spain). The results show that there is a correlation between the time series of the feeder voltage and the consumer meters. The proposed method reached a 100% success rate in the case study. In addition, the results obtained open the way to deploy a new grid configuration to minimize the load imbalance.
智能电网中的相位识别-案例研究
. 配电系统的一个普遍问题是确定用户连接到哪个相位。一般来说,公用事业公司没有记录相位随时间的分布,这是解决配电网不平衡问题的关键。此外,人工相位识别由于成本高,是不可行的。智能电表的大规模部署可以定期读取能耗、电压、电流等数据。在这大量的数据中,出现了几种基于机器学习的技术,在维护现有基础设施的同时自动解决阶段识别问题。因此,相位识别对于开发智能电网解决方案至关重要。在目前的工作中,我们应用了一种无监督的机器学习技术,该技术允许对位于巴利阿里群岛(西班牙)的低压三相径向配电网络的智能电表记录的时间电压序列进行分类。结果表明,馈线电压的时间序列与用户仪表之间存在一定的相关性。在实例研究中,该方法的成功率达到100%。此外,所获得的结果为部署新的网格配置以最小化负载不平衡开辟了道路。
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来源期刊
Renewable Energy and Power Quality Journal
Renewable Energy and Power Quality Journal Energy-Energy Engineering and Power Technology
CiteScore
0.70
自引率
0.00%
发文量
147
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