Poisoning Attack against Event Classification in Distribution Synchrophasor Measurements

M. Kamal, A. Shahsavari, Hamed Mohsenian Rad
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引用次数: 2

Abstract

Distribution-level phasor measurement units (D-PMUs), a.k.a., micro-PMUs, have received a growing attention in recent years to support various applications in power distribution systems. Many of the applications of micro-PMUs work based on the analysis of events in the stream of synchrophasor measurements to achieve situational awareness. A key step in almost every event-based method in this emerging field is to classify the type of the event, where classification can be done with respect to various factors. However, if the task of event classification is compromised, then an adversary can highly affect the perception of the utility operator and undermine any event-based application that makes use of the event classification results. In this paper, we explore a new cyber-threat against data-driven event classification in micro-PMU measurements. In particular, we model the poisoning attack against support vector machine (SVM) as the method of event classification; which has been used in practice to study distribution synchrophasors. We apply the new attack model to an event classifier that uses real-world micro-PMU data. In addition to conducting vulnerability analysis, we also propose a novel attack detection method which can detect and evaluate the changes in the decision boundary of the SVM due to the poisoning attack. The proposed attack detection method is also able to identify the number of poisoned data points in the training dataset.
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分布同步量测量中事件分类的中毒攻击
配电级相量测量单元(d - pmu),又称微型pmu,近年来受到越来越多的关注,以支持配电系统中的各种应用。微型pmu的许多应用都是基于同步量测量流中的事件分析来实现态势感知。在这个新兴领域中,几乎所有基于事件的方法的关键步骤都是对事件的类型进行分类,可以根据各种因素进行分类。但是,如果事件分类任务被破坏,那么攻击者就会严重影响公用事业运营商的感知,并破坏任何使用事件分类结果的基于事件的应用程序。在本文中,我们探讨了一种针对微pmu测量中数据驱动事件分类的新的网络威胁。特别地,我们将针对支持向量机(SVM)的中毒攻击建模为事件分类方法;该方法已在实际中应用于分布同步量的研究。我们将新的攻击模型应用于使用真实世界微pmu数据的事件分类器。除了进行漏洞分析外,我们还提出了一种新的攻击检测方法,该方法可以检测和评估支持向量机因中毒攻击而导致的决策边界的变化。所提出的攻击检测方法还能够识别训练数据集中的中毒数据点数量。
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