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CONGO²: Scalable Online Anomaly Detection and Localization in Power Electronics Networks.
Yu, Jun; Cheng, Huimin; Zhang, Jinan; Li, Qi; Wu, Shushan; Zhong, Wenxuan; Ye, Jin; Song, WenZhan; Ma, Ping.
Affiliation
  • Yu J; School of Mathematics and Statistics, and key laboratory of mathematical theory and computation in information security, Beijing Institute of Technology.
  • Cheng H; Department of Statistics, University of Georgia.
  • Zhang J; College of Engineering, University of Georgia.
  • Li Q; College of Engineering, University of Georgia.
  • Wu S; Department of Statistics, University of Georgia.
  • Zhong W; Department of Statistics, University of Georgia.
  • Ye J; College of Engineering, University of Georgia.
  • Song W; College of Engineering, University of Georgia.
  • Ma P; Department of Statistics, University of Georgia.
IEEE Internet Things J ; 9(15): 13862-13875, 2022 Aug 01.
Article in En | MEDLINE | ID: mdl-36712176
ABSTRACT
Rapid and accurate detection and localization of electronic disturbances simultaneously are important for preventing its potential damages and determining potential remedies. Existing anomaly detection methods are severely limited by the low accuracy, the expensive computational cost and the need for highly trained personnel. There is an urgent need for a scalable online algorithm for in-field analysis of large-scale power electronics networks. In this paper, we propose a fast and accurate algorithm for anomaly detection and localization of power electronics networks stratified colored-node graph (CONGO2). This algorithm hierarchically models the change of correlated waveforms and then correlated sensors using the colored-node graph. By aggregating the change of each sensor with its neighbors' inputs, we can spontaneously identify and localize the anomaly that cannot be detected by data collected from a single sensor. As our proposed method only focuses on the changes within a short time frame, it is highly computational efficient and only needs small data storage. Thus, our method is ideal for online and reliable anomaly detection and localization of large-scale power electronic networks. Compared to existing anomaly detection methods, our method is entirely data-driven without training data, highly accurate and reliable for wide-spectrum anomalies detection, and more importantly, capable of both detection and localization. Thus, it is ideal for in-field deployment for large-scale power electronic networks. As illustrated by a distributed energy resources (DERs) power grid with 37-node, our method can effectively detect and localize various cyber and physical attacks.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Diagnostic_studies Language: En Journal: IEEE Internet Things J Year: 2022 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Diagnostic_studies Language: En Journal: IEEE Internet Things J Year: 2022 Document type: Article