Spatio-Temporal Correlation Analysis of Online Monitoring Data for Anomaly Detection and Location in Distribution Networks
Xin Shi, Robert Qiu, Zenan Ling, Fan Yang, Haosen Yang, Xing He

TL;DR
This paper introduces a spatio-temporal correlation analysis method for early anomaly detection and precise location in distribution networks using online monitoring data, effectively distinguishing true faults from noise.
Contribution
It develops a novel spectral analysis approach combining random matrix theory and free random variable techniques for accurate anomaly detection and localization.
Findings
Effective early anomaly detection demonstrated on real data
Robustness to random fluctuations reduces false alarms
Accurate fault localization in distribution networks
Abstract
The online monitoring data in distribution networks contain rich information on the running states of the networks. By leveraging the data, this paper proposes a spatio-temporal correlation analysis approach for anomaly detection and location in distribution networks. First, spatio-temporal matrix for each feeder line in a distribution network is formulated and the spectrum of its covariance matrix is analyzed. The spectrum is complex and exhibits two aspects: 1) bulk, which arises from random noise or fluctuations and 2) spikes, which represents factors caused by anomaly signals or fault disturbances. Then, by connecting the estimation of the number of factors to the limiting empirical spectral density of covariance matrices of residuals, the spatio-temporal parameters are accurately estimated, during which free random variable techniques are used. Based on the estimators, anomaly…
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