Line Loss Outlier Detection and Correlation Analysis Between Low-voltage Distributed PV Loads: An Empirical Study

Chengfei Qi, Ye Xia, Chaoran Bi, Yaoyu Wang, Peisen Yuan
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Abstract

The development of clean energy sources, such as distributed photovoltaic provides an essential means of achieving the ’double carbon’ target. In this paper, we investigate the detection of line loss anomalies based on automated machine learning and the relationship between distributed PV line loss and station area to study the impact of PV on the line loss of the station area. The report is based on data analysis from an empirical case of a constructed PV grid. Based on the example analysis and the anomaly detection model, the significant influencing factors of the impact of low-voltage distributed PV on the station area were obtained.
低压分布式光伏负荷线损异常值检测与相关性分析:实证研究
分布式光伏等清洁能源的发展为实现“双碳”目标提供了重要手段。本文研究基于自动化机器学习的线损异常检测,以及分布式光伏线损与站区关系,研究光伏对站区线损的影响。该报告基于对一个已建成的光伏电网的实证案例的数据分析。通过算例分析和异常检测模型,得出了低压分布式光伏对电站区域影响的显著影响因素。
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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