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Online Event Detection in Synchrophasor Data with Graph Signal Processing

Jie Shi, Brandon Foggo, Xianghao Kong, Yuanbin Cheng, Nanpeng Yu, Koji Yamashita

202025 citationsDOIOpen Access PDF

Abstract

Online detection of anomalies is crucial to enhancing the reliability and resiliency of power systems. We propose a novel data-driven online event detection algorithm with synchrophasor data using graph signal processing. In addition to being extremely scalable, our proposed algorithm can accurately capture and leverage the spatio-temporal correlations of the streaming PMU data. This paper also develops a general technique to decouple spatial and temporal correlations in multiple time series. Finally, we develop a unique framework to construct a weighted adjacency matrix and graph Laplacian for product graph. Case studies with real-world, large-scale synchrophasor data demonstrate the scalability and accuracy of our proposed event detection algorithm. Compared to the state-of-the-art benchmark, the proposed method not only achieves higher detection accuracy but also yields higher computational efficiency.

Topics & Concepts

Computer scienceScalabilityLeverage (statistics)Adjacency matrixGraphData modelingEvent (particle physics)Data miningAlgorithmArtificial intelligenceReal-time computingTheoretical computer scienceQuantum mechanicsDatabasePhysicsAdvanced Graph Neural NetworksPower System Optimization and StabilityAnomaly Detection Techniques and Applications
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