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Compensation of Significant Parametric Uncertainties Using Sliding Mode Online Learning

机译:使用滑动模式在线学习补偿显着的参数不确定性

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An augmented nonlinear inverse dynamics (NID) flight control strategy using sliding mode online learning for a small unmanned aircraft system (UAS) is presented. Because parameter identification for this class of aircraft often is not valid throughout the complete flight envelope, aerodynamic parameters used for model based control strategies may show significant deviations. For the concept of feedback linearization this leads to inversion errors that in combination with the distinctive susceptibility of small UAS towards atmospheric turbulence pose a demanding control task for these systems. In this work an adaptive flight control strategy using feedforward neural networks for counteracting such nonlinear effects is augmented with the concept of sliding mode control (SMC). SMC-learning is derived from variable structure theory. It considers a neural network and its training as a control problem. It is shown that by the dynamic calculation of the learning rates, stability can be guaranteed and thus increase the robustness against external disturbances and system failures. With the resulting higher speed of convergence a wide range of simultaneously occurring disturbances can be compensated. The SMC-based flight controller is tested and compared to the standard gradient descent (GD) backpropagation algorithm under the influence of significant model uncertainties and system failures.
机译:提出了一种使用滑动模式在线学习的增强非线性逆动力学(NID)飞行控制策略,用于小型无人机系统(UAS)。因为这类飞机的参数识别通常在整个飞行信封中没有有效,所以用于基于模型的控制策略的空气动力学参数可能显示出显着的偏差。对于反馈线性化的概念,这导致反转误差与小US对大气湍流的独特敏感性施加了苛刻的控制任务。在这项工作中,利用用于抵消这种非线性效果的前馈神经网络的自适应飞行控制策略随着滑动模式控制(SMC)的概念而增强。 SMC学习来自可变结构理论。它认为神经网络及其作为控制问题的培训。结果表明,通过动态计算学习速率,可以保证稳定性,从而增加对外部干扰和系统故障的鲁棒性。随着所得到的较高速度的收敛速度可以补偿各种各样的发生干扰。基于SMC的飞行控制器进行了测试,并与标准梯度下降(GD)反向化算法相比,在显着的模型不确定性和系统故障的影响下。

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