Anomaly Detection in Cyber-Physical System using Logistic Regression Analysis

Subrina Noureen, S. Bayne, E. Shaffer, D. Porschet, M. Berman
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引用次数: 8

Abstract

The emerging smart grid, cyber-physical infrastructure, provides a steady, secure, and reliable power system over the current power grid. Synchrophasor systems, like Phasor Measurement Units (PMUs), are a key element of smart grids. They have the capability to measure time-coherent phasors of a grid. The key advantage of PMUs is the fast sampling rate that they provide over traditional Supervisory control and data acquisition (SCADA) systems which can be in the range of 30-120 samples/second. These higher sampling rates come at the cost of higher data quantities. Generating large amounts of data per day poses a challenge in making the most efficient use of information. In this paper, this problem has been addressed utilizing machine learning techniques, Logistic Regression Analysis, on PMU data. Identifying system anomalies in smart power grids is the primary focus of this paper. The standard IEEE 39 Bus system has been modified using the RT-LAB environment to generate faults and to produce synthetic synchrophasor data. Archived/offline mode data from a Phasor data concentrator (PDC) database is being used to train and test the algorithm. Additionally, the algorithm has been tested in real-time using an OPAL-RT digital real-time simulator.
基于逻辑回归分析的信息物理系统异常检测
新兴的智能电网,即网络物理基础设施,在现有电网的基础上提供稳定、安全、可靠的电力系统。同步相量系统,如相量测量单元(pmu),是智能电网的关键要素。他们有能力测量网格的时间相干相量。pmu的主要优势在于其比传统的监控和数据采集(SCADA)系统提供的快速采样率,其采样率可以在30-120个样本/秒的范围内。这些更高的采样率是以更高的数据量为代价的。每天产生大量数据对最有效地利用信息提出了挑战。在本文中,利用机器学习技术,逻辑回归分析,在PMU数据上解决了这个问题。智能电网系统异常识别是本文研究的重点。标准的IEEE 39总线系统已经使用RT-LAB环境进行了修改,以产生故障并产生合成同步数据。来自Phasor数据集中器(PDC)数据库的存档/离线模式数据被用于训练和测试算法。此外,该算法已在OPAL-RT数字实时模拟器上进行了实时测试。
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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