Detection of False Data Injection Attack in Smart Grid Using Decomposed Nearest Neighbor Techniques

Kiyana Pedramnia, Shayan Shojaei
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引用次数: 3

Abstract

Smart grid communication system deeply rely on information technologies which makes it vulnerable to variable cyber-attacks. Among possible attacks, False Data Injection (FDI) Attack has created a severe threat to smart grid control system. Attackers can manipulate smart grid measurements such as collected data of phasor measurement units (PMU) by implementing FDI attacks. Detection of FDI attacks with a simple and effective approach, makes the system more reliable and prevents network outages. In this paper we propose a Decomposed Nearest Neighbor algorithm to detect FDI attacks. This algorithm improves traditional k-Nearest Neighbor by using metric learning. Also it learns the local-optima free distance metric by solving a convex optimization problem which makes it more accurate in decision making. We test the proposed method on PMU dataset and compare the results with other beneficial machine learning algorithms for FDI attack detection. Results demonstrate the effectiveness of the proposed approach.
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基于分解最近邻技术的智能电网虚假数据注入攻击检测
智能电网通信系统高度依赖信息技术,容易受到各种网络攻击。在各种可能的攻击中,虚假数据注入(FDI)攻击对智能电网控制系统造成了严重威胁。攻击者可以通过实施FDI攻击来操纵智能电网的测量数据,如相量测量单元(PMU)的采集数据。采用简单有效的方法检测FDI攻击,使系统更加可靠,防止网络中断。本文提出了一种分解最近邻算法来检测FDI攻击。该算法利用度量学习改进了传统的k近邻算法。通过求解一个凸优化问题来学习局部最优自由距离度量,使决策更加准确。我们在PMU数据集上测试了所提出的方法,并将结果与其他用于FDI攻击检测的有益机器学习算法进行了比较。结果表明了该方法的有效性。
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