Using Deep Learning for Detecting Mirroring Attacks on Smart Grid PMU Networks

Yusuf Korkmaz, Alvin Huseinović, Halil Bisgin, S. Mrdović, S. Uludag
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Abstract

Similar to any spoof detection systems, power grid monitoring systems and devices are subject to various cyberattacks by determined and well-funded adversaries. Many well-publicized real-world cyberattacks on power grid systems have been publicly reported. Phasor Measurement Units (PMUs) networks with Phasor Data Concentrators (PDCs) are the main building blocks of the overall wide area monitoring and situational awareness systems in the power grid. The data between PMUs and PDC(s) are sent through the legacy networks, which are subject to many attack scenarios under with no, or inadequate, countermeasures in protocols, such as IEEE 37.118-2. In this paper, we consider a stealthier data spoofing attack against PMU networks, called a mirroring attack, where an adversary basically injects a copy of a set of packets in reverse order immediately following their original positions, wiping out the correct values. To the best of our knowledge, for the first time in the literature, we consider a more challenging attack both in terms of the strategy and the lower percentage of spoofed attacks. As part of our countermeasure detection scheme, we make use of novel framing approach to make application of a 2D Convolutional Neural Network (CNN)-based approach which avoids the computational overhead of the classical sample-based classification algorithms. Our experimental evaluation results show promising results in terms of both high accuracy and true positive rates even under the aforementioned stealthy adversarial attack scenarios.
基于深度学习的智能电网PMU网络镜像攻击检测
与任何欺骗检测系统类似,电网监控系统和设备也会受到有决心和资金充足的对手的各种网络攻击。许多广为人知的现实世界中针对电网系统的网络攻击都被公开报道过。具有相量数据集中器(PDCs)的相量测量单元(pmu)网络是电网中整个广域监测和态势感知系统的主要组成部分。pmu和配电柜之间的数据是通过传统的网络发送的,而传统的网络在协议(如IEEE 37.118-2)没有应对措施或应对措施不足的情况下,会受到许多攻击场景的影响。在本文中,我们考虑了一种针对PMU网络的更隐蔽的数据欺骗攻击,称为镜像攻击,攻击者基本上是在一组数据包的原始位置之后以相反的顺序注入一份副本,抹去正确的值。据我们所知,这是文献中第一次,我们在策略和较低的欺骗攻击百分比方面考虑更具挑战性的攻击。作为我们的对抗检测方案的一部分,我们利用新颖的分帧方法来应用基于二维卷积神经网络(CNN)的方法,避免了经典的基于样本的分类算法的计算开销。我们的实验评估结果显示,即使在上述隐形对抗性攻击场景下,在高准确率和真阳性率方面也有很好的结果。
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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