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Adaptive Neural Network Based Fault Detection Design for Unmanned Quadrotor under Faults and Cyber Attacks

机译:基于自适应神经网络的故障和网络攻击下的无人英验机的故障检测设计

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The occurrence of faults and failures in flight control systems of unmanned aerial vehicles (UAVs) can destabilize the system which could cause potential economic and life losses. Therefore, it's necessary to detect faults and attacks in real time and modify the control system based on the occurred fault. In this paper, a neural network-based fault detection (NNFD) approach is introduced to detect and estimate the faults and false data injection (FDI) attacks on the sensor systems of a quadrotor in real time. An unmanned quadrotor is selected as our case study to demonstrate the effectiveness of our proposed NFDD strategy. The simulation results show that the applied NNFD method can detect the faults and FDI attacks on an unmanned quadrotor sensors with sufficient accuracy.
机译:无人驾驶飞行器(无人机)飞行控制系统中的故障和故障发生的发生可能使系统稳定,这可能导致潜在的经济和寿命损失。因此,有必要实时检测故障和攻击,并根据发生故障修改控制系统。在本文中,引入了基于神经网络的故障检测(NNFD)方法,以实时检测和估计轮廓仪的传感器系统上的故障和假数据喷射(FDI)攻击。选择无人驾驶的四轮车作为我们的案例研究,以证明我们提出的NFDD策略的有效性。仿真结果表明,应用的NNFD方法可以检测具有足够精度的无人电压传感器上的故障和FDI攻击。

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