Deep Learning Based Real-Time Detection of False Data Injection Attacks in Power Grids

Debottam Mukherjee, Samrat Chakraborty, Ramashis Banerjee, Joydeep Bhunia, Pabitra Kumar Guchhait
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引用次数: 4

Abstract

False data injection attack is an advanced class of modern cyber-attacks against the state estimation algorithm of the smart grid. Such attacks can inherently delude the bad data detectors at the control center and develop critical scenarios by corrupting the set of estimated states. This work furnishes an effective detection of such class of attacks with predefined bounds. The detection policy involves a robust, nonlinear deep learning approach that is capable of not only forecasting the operating states of the grid, but also can be effectively deployed by the operator to determine any attacks within the raw measurements. It is seen that such scalable models working in real-time promote a robust performance under measurement noise as well. The proposed model with its set of optimal hyper-parameters showcases a better state forecasting scheme with minimum error margin than most of the state of the art forecasting strategies. A diligent analysis on the IEEE 14 bus test system effectively promotes the aforementioned propositions.
基于深度学习的电网虚假数据注入攻击实时检测
虚假数据注入攻击是针对智能电网状态估计算法的一类现代网络攻击。这种攻击可能会欺骗控制中心的不良数据检测器,并通过破坏估计状态集来开发关键场景。这项工作提供了一个有效的检测这类攻击预定义的边界。检测策略涉及一种鲁棒的非线性深度学习方法,该方法不仅能够预测电网的运行状态,而且可以由操作员有效地部署,以确定原始测量中的任何攻击。可以看出,这种实时工作的可扩展模型在测量噪声下也具有鲁棒性。该模型具有最优超参数集,与大多数最先进的预测策略相比,具有最小误差范围的更好的状态预测方案。通过对ieee14总线测试系统的仔细分析,可以有效地促进上述主张。
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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