A Graph Neural Network Multi-Task Learning-Based Approach for Detection and Localization of Cyberattacks in Smart Grids

Abdulrahman Takiddin, R. Atat, Muhammad Ismail, K. Davis, E. Serpedin
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引用次数: 1

Abstract

False data injection attacks (FDIAs) on smart power grids’ measurement data present a threat to system stability. When malicious entities launch cyberattacks to manipulate the measurement data, different grid components will be affected, which leads to failures. For effective attack mitigation, two tasks are required: determining the status of the system (normal operation/under attack) and localizing the attacked bus/power substation. Existing mitigation techniques carry out these tasks separately and offer limited detection performance. In this paper, we propose a multi-task learning-based approach that performs both tasks simultaneously using a graph neural network (GNN) with stacked convolutional Chebyshev graph layers. Our results show that the proposed model presents superior system status identification and attack localization abilities with detection rates of 98.5−100% and 99 − 100%, respectively, presenting improvements of 5 − 30% compared to benchmarks.
基于图神经网络多任务学习的智能电网网络攻击检测与定位方法
针对智能电网测量数据的虚假数据注入攻击(FDIAs)对系统稳定性构成威胁。当恶意实体发起网络攻击,对测量数据进行操纵时,会影响到不同的网格组件,从而导致故障。为了有效地减轻攻击,需要完成两个任务:确定系统状态(正常运行/受到攻击)和定位受攻击的总线/变电站。现有的缓解技术单独执行这些任务,并且提供有限的检测性能。在本文中,我们提出了一种基于多任务学习的方法,该方法使用具有堆叠卷积切比雪夫图层的图神经网络(GNN)同时执行两个任务。结果表明,该模型具有优异的系统状态识别和攻击定位能力,检测率分别为98.5−100%和99−100%,与基准测试相比提高了5−30%。
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