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Detection of false data injection attacks in smart grids using Recurrent Neural Networks

机译:使用递归神经网络检测智能电网中的错误数据注入攻击

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False Data Injection (FDI) attacks create serious security challenges to the operation of power systems, especially when they are carefully constructed to bypass conventional state estimation bad data detection techniques implemented in the power system control room. This paper investigates the utilization of Recurrent Neural Networks (RNN) as a machine learning technique to detect these FDI attacks. The proposed detection algorithm is validated throughout simulations of FDI in power flow data over the span of five years using IEEE-30 Bus system. The simulation results confirm that the proposed RNN-based algorithm achieves high accuracy in detecting anomalies in the data, by observing the temporal variation in the successive data sequence.
机译:错误数据注入(FDI)攻击给电力系统的运行带来了严重的安全挑战,尤其是当精心构造它们以绕过电力系统控制室中实施的常规状态估计错误数据检测技术时,尤其如此。本文研究了递归神经网络(RNN)作为一种机器学习技术来检测这些FDI攻击的利用。提出的检测算法在使用IEEE-30总线系统对FDI进行了为期五年的潮流数据模拟中得到了验证。仿真结果表明,基于连续神经网络的算法通过观察连续数据序列中的时间变化,在检测数据异常方面实现了较高的准确性。

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