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Anomaly Detection and Processing in Artificial Intelligence for IT Operations of Power System

机译:电力系统IT运营中人工智能的异常检测与处理

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In recent years anomaly detection has been wildly applied in many fields, from zero day attack detection to insider threat detection, from situational awareness to intrusion detection. For power system, secure and stable operation is indispensable and it takes electric utility staff huge amount of time. Naturally, artificial intelligence for IT operations (AIOps) especially anomaly detection can also be used to find out unusual behavior discord with expected pattern in this field. In this paper, we propose an intelligent system that first conducts a joint time series detection to identify outliers or anomalies on the basis of statistical judgment and machine learning, and then automatically discovers those anomalous functions in the method of statistical analysis. The result indicates that the implementation of our system is able to largely reduce labor costs, improve automation and efficiency of power system operations and maintenance.
机译:近年来,异常检测已广泛应用于许多领域,从零日攻击检测到内部威胁检测,从态势感知到入侵检测。对于电力系统来说,安全稳定的运行是必不可少的,并且电力公用事业人员要花费大量的时间。当然,也可以使用IT操作(AIOps)的人工智能,尤其是异常检测,来发现与该领域预期模式不符的异常行为。在本文中,我们提出了一种智能系统,该系统首先进行联合时间序列检测以基于统计判断和机器学习来识别异常值或异常,然后通过统计分析的方法自动发现那些异常功能。结果表明,我们系统的实施能够大大降低人工成本,提高电力系统运行和维护的自动化程度和效率。

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