As a highly complex and integrated cyber-physical system, modern power grids are exposed to cyberattacks. False data injection attacks (FDIAs), specifically, represent a major class of cyber threats to smart grids by targeting the measurement data's integrity. Although various solutions have been proposed to detect those cyberattacks, the vast majority of the works have ignored the inherent graph structure of the power grid measurements and validated their detectors only for small test systems with less than a few hundred buses. To better exploit the spatial correlations of smart grid measurements, this paper proposes a deep learning model for cyberattack detection in large-scale AC power grids using Chebyshev Graph Convolutional Networks (CGCN). By reducing the complexity of spectral graph filters and making them localized, CGCN provides a fast and efficient convolution operation to model the graph structural smart grid data. We numerically verify that the proposed CGCN based detector surpasses the state-of-the-art model by 7.86 in detection rate and 9.67 in false alarm rate for a large-scale power grid with 2848 buses. It is notable that the proposed approach detects cyberattacks under 4 milliseconds for a 2848-bus system, which makes it a good candidate for real-time detection of cyberattacks in large systems.
翻译:作为高度复杂和一体化的网络物理系统,现代电网暴露于网络攻击中。虚假数据注入攻击具体地说,通过针对测量数据的完整性,对智能电网构成一系列重大的网络威胁。虽然提出了各种办法来检测这些网络攻击,但绝大多数工程忽视了电网测量的内在图形结构,只对不到几百辆公共汽车的小型测试系统验证了探测器。为了更好地利用智能电网测量的空间相关性,本文件提议了利用Chebyshev图表革命网络(CGCN)在大型AC电网中进行网络攻击探测的深层学习模型。通过减少光谱图过滤器的复杂程度并使之本地化,CGCN提供了快速有效的革命操作,以模拟图形结构智能电网数据。我们从数字上核实,拟议的CGCN探测器在探测率方面超过了7.86,在使用2848辆大客车的大型电网的虚假警报率方面超过了最先进的模型。值得注意的是,拟议采用的方法是减少光谱图过滤器过滤系统的复杂性,在4毫米秒内探测了28号。