Early Anomaly Detection for Power Systems Based on Kullback-Leibler Divergence Using Factor Model Analysis

Qing Feng, G. Radman, Xuebin Li
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Abstract

Real-time anomaly detection is a critical monitoring task for power systems. Most studies of power network detection fail to identify small fault signals or disturbances that might lead to damages or system-wide blackout. This work presents a methodology for analyzing high-dimensional PMU data and detecting early events for large-scale power systems in a non-Gaussian noise environment. Also, spatio-temporal correlations of PMU data are explored and determined by the factor model for anomaly detection. Based on random matrix theory, the factor model monitors the variation of spatio-temporal correlations in PMU data and estimates the number of dynamic factors. Kullback-Leibler Divergence is employed to measure the deviation between two spectral distributions: the empirical spectral distribution of the covariance matrix of residuals from online monitoring data and its theoretical spectral distribution determined by the factor model. Using IEEE 57-bus, IEEE 118-bus, and Polish 2383-bus systems, three different case studies demonstrate that the proposed method is more effective in identifying early-stage anomalies in high-dimensional PMU data collected from large-scale power networks. Performance evaluations validate that this method is sensitive and robust to small fault signals compared with other statistical approaches. The proposed method is a data-driven approach that doesn’t require any prior knowledge of the topology of power networks.
基于Kullback-Leibler散度的电力系统早期异常检测及因子模型分析
实时异常检测是电力系统监测的一项重要任务。大多数电网检测研究都不能识别可能导致破坏或全系统停电的小故障信号或干扰。这项工作提出了一种在非高斯噪声环境下分析高维PMU数据和检测大型电力系统早期事件的方法。在此基础上,探讨了PMU数据的时空相关性,并利用因子模型确定了PMU数据的时空相关性。该因子模型基于随机矩阵理论,监测PMU数据的时空相关性变化,估计动态因子的数量。利用Kullback-Leibler散度度量在线监测数据残差协方差矩阵的经验谱分布与因子模型确定的理论谱分布之间的偏差。使用IEEE 57总线、IEEE 118总线和波兰2383总线系统,三个不同的案例研究表明,所提出的方法可以更有效地识别从大规模电网收集的高维PMU数据的早期异常。性能评估表明,与其他统计方法相比,该方法对小故障信号具有敏感性和鲁棒性。该方法是一种数据驱动的方法,不需要任何电网拓扑的先验知识。
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