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Deep learning for online AC False Data Injection Attack detection in smart grids: An approach using LSTM-Autoencoder

机译:在智能电网中进行在线AC错误数据注入攻击检测的深度学习:使用LSTM-AutoEncoder的方法

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摘要

The Power system is a crucial Cyber-Physical system and is prone to the False Data Injection Attack (FDIA). The existing FDIA detection mechanism focuses on DC state estimation. In this paper, we propose a phased AC FDIA targeting at generation rescheduling and load shedding. After injecting the false data into the measurements, the estimated states will be deviated from those in normal conditions. The proposed mechanism extracts the spatial and spectral features of the modes decomposed from the estimated states using variational mode decomposition (VMD). Then LSTM-Autoencoder is trained by learning the temporal correlations between the multi-dimensional feature vectors. The reconstruction error deviation vectors of the feature vectors are calculated and updated by LSTM-Autoencoder. Based on these error deviation vectors, the Logistic Regression (LR) classifier is trained to determine whether the error deviation vector is abnormal. We evaluate the performance of the proposed mechanism with comprehensive simulations on IEEE 14 and 118-bus systems. The results indicate that the mechanism can achieve a satisfactory attack detection accuracy.
机译:电力系统是一个至关重要的网络物理系统,并且容易出现假数据注入攻击(FDIA)。现有的FDIA检测机制侧重于直流状态估计。在本文中,我们提出了一项序列的AC FDIA,旨在生成重新安排和负载脱落。在将假数据注入测量后,估计的状态将偏离正常条件的状态。所提出的机制利用变分模式分解(VMD)提取从估计的状态分解的模式的空间和光谱特征。然后通过学习多维特征向量之间的时间相关性来训练LSTM-AutoEncoder。通过LSTM-AutoEncoder计算和更新特征向量的重建误差偏差向量。基于这些误差偏差向量,训练逻辑回归(LR)分类器以确定错误偏差矢量是否异常。我们评估了在IEEE 14和118总线系统上全面模拟的提出机制的表现。结果表明该机制可以实现令人满意的攻击检测精度。

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