Hybrid AI-based Anomaly Detection Model using Phasor Measurement Unit Data

Yuval Abraham Regev, Henrik Vassdal, Ugur Halden, Ferhat Ozgur Catak, U. Cali
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引用次数: 2

Abstract

Over the last few decades, extensive use of information and communication technologies has been the main driver of the digitalization of power systems. Proper and secure monitoring of the critical grid infrastructure became an integral part of the modern power system. Using phasor measurement units (PMUs) to surveil the power system is one of the technologies that have a promising future. Increased frequency of measurements and smarter methods for data handling can improve the ability to reliably operate power grids. The increased cyber-physical interaction offers both benefits and drawbacks, where one of the drawbacks comes in the form of anomalies in the measurement data. The anomalies can be caused by both physical faults on the power grid, as well as disturbances, errors, and cyber attacks in the cyber layer. This paper aims to develop a hybrid AI-based model that is based on various methods such as Long Short Term Memory (LSTM), Convolutional Neural Network (CNN) and other relevant hybrid algorithms for anomaly detection in phasor measurement unit data. The dataset used within this research was acquired by the University of Texas, which consists of real data from grid measurements. In addition to the real data, false data that has been injected to produce anomalies has been analyzed. The impacts and mitigating methods to prevent such kind of anomalies are discussed.
基于相量测量单元数据的混合人工智能异常检测模型
在过去的几十年里,信息和通信技术的广泛使用已经成为电力系统数字化的主要驱动力。对电网关键基础设施进行合理、安全的监控已成为现代电力系统的重要组成部分。利用相量测量单元(pmu)对电力系统进行监测是一种很有发展前景的技术。增加测量频率和更智能的数据处理方法可以提高电网可靠运行的能力。增加的网络物理交互带来了好处和缺点,其中一个缺点是测量数据中的异常形式。这些异常既有电网的物理故障,也有网络层的干扰、错误和网络攻击。本文旨在开发一种基于长短期记忆(LSTM)、卷积神经网络(CNN)等多种方法的混合人工智能模型,用于相量测量单元数据的异常检测。这项研究中使用的数据集是由德克萨斯大学获得的,它由来自网格测量的真实数据组成。除真实数据外,还分析了为产生异常而注入的虚假数据。讨论了此类异常的影响和缓解措施。
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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