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首页> 外文期刊>IEEE transactions on industrial informatics >Detection and Mitigation of False Data Injection Attacks in Networked Control Systems
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Detection and Mitigation of False Data Injection Attacks in Networked Control Systems

机译:网络控制系统中假数据注入攻击的检测和减轻

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In networked control systems (NCS), agents participating in a network share their data with others to work together. When agents share their data, they can naturally expose the NCS to layers of faults and cyber-attacks, which can contribute to the propagation of error from one agent/area to another within the system. One common type of attack in which adversaries corrupt information within a NCS is called a false data injection (FDI) attack. This article proposes a control scheme, which enables a NCS to detect and mitigate FDI attacks and, at the same time, compensate for measurement noise and process noise. Furthermore, the developed controller is designed to be robust to unknown inputs. The algorithm incorporates a Kalman filter as an observer to estimate agents' states. We also develop a neural network (NN) architecture to detect and respond to any anomalies caused by FDI attacks. The weights of the NN are updated using an extended Kalman filter, which significantly improves the accuracy of FDI detection. A simulation of the results is provided, which illustrates satisfactory performance of the developed method to accurately detect and respond to FDI attacks.
机译:在网络控制系统(NCS)中,参与网络的代理与其他人共享他们的数据以共同努力。当代理共享其数据时,它们可以自然地将NCS暴露给故障和网络攻击层,这可以有助于从一个代理/区域到系统内的另一个代理/区域的错误传播。一种常见类型的攻击,其中逆境损坏了NCS内的信息被称为假数据注入(FDI)攻击。本文提出了一种控制方案,它使NCS能够检测和减轻FDI攻击,同时补偿测量噪声和过程噪声。此外,开发的控制器被设计成强大到未知的输入。该算法包含一个卡尔曼滤波器作为观察者来估计代理状态。我们还开发了一个神经网络(NN)架构,用于检测和响应由FDI攻击引起的任何异常。使用扩展的卡尔曼滤波器更新NN的权重,这显着提高了FDI检测的准确性。提供了结果的模拟,这表示了开发方法的令人满意的性能,以准确地检测和响应FDI攻击。

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