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Online Clustering based Fault Data Detection Method for Distributed PV Sites

机译:基于在线聚类的分布式光伏站点故障数据检测方法

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摘要

In distributed photovoltaic (PV) sites, fault data detection is critical to ensure the safety of power grid. Accurate and reliable PV data is the basis of PV power generation performance analysis and power load forecasting. However, many PV power sites have high proportion of fault power measured data, which greatly impairs the analysis of power site performance. This paper summarizes three typical fault data types of PV data based on engineering experience. Utilizing Spark Streaming and k-means algorithm, a new method, namely the streaming k-means method under different time windows is adopted to detect the fault PV data in real time. In the meanwhile, the specified Silhouette Coefficient is used to choose the proper clustering number in each detection period. And in order to better display the clustering results, principal components analysis (PCA) is applied to present the data distribution in real time. In the numerical simulation, the actual data from Wuxi Hongdou PV power cites and the artificially generated data set are utilized to verify the proposed method. The experiment results show that the streaming k-means method can effectively identify various types of fault data and has a better detection rate than the 3-sigma recognition method and logistic regression.
机译:在分布式光伏(PV)站点中,故障数据检测对于确保电网安全至关重要。准确可靠的光伏数据是光伏发电性能分析和电力负荷预测的基础。但是,许多光伏发电站的故障功率测量数据比例很高,这极大地损害了对发电站性能的分析。本文基于工程经验总结了三种典型的光伏数据故障数据类型。利用Spark Streaming和k-means算法,采用不同时间窗口下的流式k-means方法实时检测故障PV数据。同时,指定的轮廓系数用于在每个检测周期中选择合适的聚类数。为了更好地显示聚类结果,应用主成分分析(PCA)实时显示数据分布。在数值模拟中,利用无锡红豆光伏发电站的实际数据和人工生成的数据集来验证所提出的方法。实验结果表明,与3-sigma识别方法和逻辑回归相比,流k均值方法可以有效地识别各种类型的故障数据,并且具有更高的检测率。

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