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False Data Injection Attacks Detection with Deep Belief Networks in Smart Grid

机译:智能电网中基于深度信念网络的虚假数据注入攻击检测

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As a typical information physics system, the smart grid can realize the two-way transmission of information. The deep integration of the information physics system brings more risks to the system while improving the automation management level of the power system. The false data injection attack is a new type of attack method for power system state estimation. The attacker can bypass the traditional detection method to change the state estimation result, so that the control center makes wrong decisions and threatens the safe operation of the power grid. In this paper, we focus on the detection of false data injection attacks in smart grids. A DBN-based attack detection method is proposed. Unsupervised learning is performed from the bottom of the restricted Boltzmann machine to provide initial weight for the network. The backpropagation algorithm propagates the error from top to bottom and fine-tunes the model parameters. To evaluate the effectiveness of the proposed detection method, simulation experiment is performed in the IEEE standard test system. We set different contrast scenarios to verify the feasibility and effectiveness of the detection model. The results demonstrate that the proposed approach achieves better performance with comparison to the SVM based detection approach.
机译:作为典型的信息物理系统,智能电网可以实现信息的双向传输。信息物理系统的深度集成给系统带来了更多的风险,同时提高了电力系统的自动化管理水平。错误数据注入攻击是一种用于电力系统状态估计的新型攻击方法。攻击者可以绕过传统的检测方法来改变状态估计结果,从而使控制中心做出错误的决定,并威胁到电网的安全运行。在本文中,我们专注于检测智能电网中的错误数据注入攻击。提出了一种基于DBN的攻击检测方法。无监督学习是从受限的Boltzmann机器的底部执行的,以为网络提供初始权重。反向传播算法将误差从上到下传播,并微调模型参数。为了评估所提出的检测方法的有效性,在IEEE标准测试系统中进行了仿真实验。我们设置了不同的对比方案以验证检测模型的可行性和有效性。结果表明,与基于SVM的检测方法相比,该方法具有更好的性能。

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