Chebyshev不等式在PMU数据流驱动在线异常检测中的应用

Pengyuan Wang, Honggang Wang, Philip J. Hart, Xian Guo, Kaveri Mahapatra
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引用次数: 0

摘要

现代电力系统的日常运行高度依赖于及时和充分的态势感知。这可以通过各种系统监控功能来实现,例如异常检测,其中通常使用静态阈值来区分正常和异常的系统状态。然而,预先确定的静态阈值通常缺乏适应未观察场景的灵活性。本文提出了两种基于切比雪夫不等式的自适应同步量数据驱动异常检测方法。采用Kundur的2区域系统和Mini-WECC系统对所提出的方法进行了评估。实验结果表明,与基于静态阈值的检测相比,该方法能够动态适应前所未有的场景,并以较低的虚警率检测出异常事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Chebyshev’s Inequality in Online Anomaly Detection Driven by Streaming PMU Data
The day-to-day operation of modern power systems is highly reliant on prompt and adequate situational-awareness. This can be achieved via various system monitoring functions such as anomaly detection, in which static thresholds are commonly utilized to distinguish the normal and the abnormal system states. However, a predetermined static threshold usually lacks the flexibility to adapt to unobserved scenarios. In this paper, we propose two self-adaptive synchrophasor data driven anomaly detection approaches based on Chebyshev’s Inequality. The proposed approaches have been evaluated with Kundur’s 2area system and Mini-WECC system. Experimental results verify that the proposed approaches can dynamically adapt to unprecedented scenarios, and detect anomalous events with lower false alarm rate compared to static threshold based detection.
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