Real time anomaly detection in wide area monitoring of smart grids

Jie Wu, Jinjun Xiong, Prasenjit Shil, Yiyu Shi
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引用次数: 10

Abstract

The real time anomaly detection in wide area monitoring of smart grids is critical to enhance the reliability of power systems. However, capturing the features of anomalous interruption and then detecting them at real time is difficult for large-scale smart grids, because the measurement data volume and complexity increases drastically with the exponential growth of data from the immense intelligent monitoring devices to be rolled out and the need for fast information retrieval from those mass data. Most of existing anomaly detection methods fail to handle it well. This paper proposes a spatial-temporal correlation based anomalous behavior model to capture the characteristics of anomaly such as transmission line outages in smart grid. Inspired by Ledoit-Wolf Shrinkage (LWS) method, we develop the real time anomaly detection (ReTAD) algorithm to overcome the issue of gigantic measurement data volume. The proposed algorithm is not only suitable for large number of power systems with high dimensional measurement data, but at the same time is also low computational complexity to apply for real time detection. Using 14-, 30, and 2383-bus systems, our experimental study demonstrates that our proposed ReTAD algorithm successfully detects the anomalous events at real time.
智能电网广域监测中的实时异常检测
智能电网广域监测中的实时异常检测是提高电力系统可靠性的关键。然而,随着庞大的智能监测设备的数据呈指数级增长,需要从海量数据中快速检索信息,测量数据量和复杂性急剧增加,因此,在大规模智能电网中捕捉异常中断特征并实时检测异常中断是困难的。现有的大多数异常检测方法都不能很好地处理这种异常。本文提出了一种基于时空相关的异常行为模型,以捕捉智能电网中输电线路中断等异常的特征。受Ledoit-Wolf收缩(LWS)方法的启发,我们开发了实时异常检测(ReTAD)算法,以克服测量数据量巨大的问题。该算法不仅适用于大量高维测量数据的电力系统,而且计算复杂度低,适用于实时检测。利用14、30和2383总线系统,我们的实验研究表明,我们提出的ReTAD算法成功地实时检测到异常事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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