作者
Jie Shi, Brandon Foggo, Xianghao Kong, Yuanbin Cheng, Nanpeng Yu, Koji Yamashita
发表日期
2020/11/11
研讨会论文
2020 IEEE International conference on communications, control, and computing technologies for smart grids (SmartGridComm)
页码范围
1-7
出版商
IEEE
简介
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.
引用总数
学术搜索中的文章
J Shi, B Foggo, X Kong, Y Cheng, N Yu, K Yamashita - … conference on communications, control, and computing …, 2020