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Detection of Fault Data Injection Attack on UAV Using Adaptive Neural Network

机译:基于自适应神经网络的无人机故障数据注入攻击检测

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摘要

A resilient and secure control system should be designed to be as safe and robust as possible in face of different types of attacks such as fault data injection (FDI) attacks; thus, nowadays, the control designers should also consider the probable attacks in their control design from the beginning. For this reason, detection of intentional faults and cyber-attacks attracts a great concern among researchers. This issue plays a great role in the safety of unmanned aerial vehicles (UAVs) due to the need of continuous supervision and control of these systems. In order to have a cyber-attack tolerant (CAT) controller, the attack and the type of attack should be detected in the first step. This paper introduces a new algorithm to detect fault data injection attack in UAV. An adaptive neural network is used to detect the injected faults in sensors of an UAV. An embedded Kalman filter (EKF) is used for online tuning of neural networks weights; these online tuning makes the attack detection faster and more accurate. The simulation results show that the proposed method can successfully detect FDI attacks applied to an UAV.
机译:在应对诸如错误数据注入(FDI)攻击等不同类型的攻击时,应设计一种具有弹性和安全性的控制系统,以使其尽可能安全可靠。因此,如今,控制设计人员还应从一开始就考虑其控制设计中可能出现的攻击。因此,故意缺陷和网络攻击的检测引起了研究人员的极大关注。由于需要对这些系统进行持续的监督和控制,因此这一问题在无人机的安全中起着重要作用。为了具有网络攻击容忍(CAT)控制器,应该在第一步中检测攻击和攻击类型。本文介绍了一种检测无人机故障数据注入攻击的新算法。自适应神经网络用于检测无人机传感器中注入的故障。嵌入式卡尔曼滤波器(EKF)用于神经网络权重的在线调整。这些在线调整使攻击检测更快,更准确。仿真结果表明,该方法可以成功检测应用于无人机的FDI攻击。

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