Islanding detection based on probabilistic PCA with missing values in PMU data

X. Liu, D. Laverty, R. Best
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引用次数: 23

Abstract

This paper proposes a probabilistic principal component analysis (PCA) approach applied to islanding detection study based on wide area PMU data. The increasing probability of uncontrolled islanding operation, according to many power system operators, is one of the biggest concerns with a large penetration of distributed renewable generation. The traditional islanding detection methods, such as RoCoF and vector shift, are however extremely sensitive and may result in many unwanted trips. The proposed probabilistic PCA aims to improve islanding detection accuracy and reduce the risk of unwanted tripping based on PMU measurements, while addressing a practical issue on missing data. The reliability and accuracy of the proposed probabilistic PCA approach are demonstrated using real data recorded in the UK power system by the OpenPMU project. The results show that the proposed methods can detect islanding accurately, without being falsely triggered by generation trips, even in the presence of missing values.
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基于PMU数据缺失值概率PCA的孤岛检测
本文提出了一种基于广域PMU数据的概率主成分分析(PCA)方法用于孤岛检测研究。根据许多电力系统运营商的说法,不受控制的孤岛运行的可能性越来越大,这是分布式可再生能源发电大规模渗透的最大问题之一。然而,传统的孤岛检测方法,如RoCoF和矢量位移,非常敏感,可能导致许多不必要的行程。提出的概率PCA旨在提高孤岛检测精度,降低基于PMU测量的意外跳闸风险,同时解决数据缺失的实际问题。通过OpenPMU项目在英国电力系统中记录的真实数据,证明了所提出的概率PCA方法的可靠性和准确性。结果表明,该方法可以准确地检测孤岛,即使在存在缺失值的情况下,也不会被代行程错误触发。
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