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Networked Operation of a UAV Using Gaussian Process-Based Delay Compensation and Model Predictive Control

机译:基于高斯过程的时延补偿和模型预测控制的无人机网络化运行

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This study addresses an operation of unmanned aerial vehicles (UAVs) in a network environment where there is time-varying network delay. The network delay entails undesirable effects on the stability of the UAV control system due to delayed state feedback and outdated control input. Although several networked control algorithms have been proposed to deal with the network delay, most existing studies have assumed that the plant dynamics is known and simple, or the network delay is constant. These assumptions are improper to multirotor-type UAVs because of their nonlinearity and time-sensitive characteristics. To deal with these problems, we propose a networked control system using model predictive control (MPC) designed under the consideration of multirotor characteristics. We also apply a Gaussian process (GP) to learn an unknown nonlinear model, which increases the accuracy of path planning and state estimation. Flight experiments show that the proposed algorithm successfully compensates the network delay and Gaussian process learning improves the UAV's path tracking performance.
机译:这项研究解决了无人飞行器(UAV)在存在时变网络延迟的网络环境中的操作。由于延迟的状态反馈和过时的控制输入,网络延迟给无人机控制系统的稳定性带来了不良影响。尽管已经提出了几种网络控制算法来应对网络延迟,但是大多数现有研究都假定工厂动态已知且简单,或者网络延迟是恒定的。这些假设因其非线性和对时间敏感的特性而不适用于多旋翼无人机。为了解决这些问题,我们提出了一种基于模型预测控制(MPC)的网络控制系统,该模型是在考虑多转子特性的基础上设计的。我们还应用高斯过程(GP)来学习未知的非线性模型,从而提高了路径规划和状态估计的准确性。飞行实验表明,该算法成功地补偿了网络时延,高斯过程学习提高了无人机的路径跟踪性能。

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