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Adaptive Regulation for a Class of Non-Affine Systems using Neural Network Backstepping with Tuning Functions

机译:使用调整功能的神经网络Backstepping对一类非仿射系统的自适应调节

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A backstepping based neural synthesis method is proposed to stabilize a class of non-affine systems, that include non-minimum phase systems as well. The method describes the class of systems in normal form, and uses two neural networks, while previous backstepping methods introduce a neural networks at each backward step. The neural weights are updated using tuning functions, and nonlinear damping terms prevent the functional reconstruction error from propagating to the next backward step. The method does not rely on a fixed-point assumption, nor does it assume that the time derivative of the control effectiveness is bounded (an assumption that is commonly employed when using the mean value theorem). All the signals of the closed-loop system are shown to be uniformly ultimately bounded. Simulation results illustrate the approach
机译:提出了一种基于反推的神经合成方法来稳定一类非仿射系统,该系统也包括非最小相位系统。该方法以正常形式描述了系统类别,并使用两个神经网络,而先前的后推方法在每个后向步骤都引入了一个神经网络。使用调整函数来更新神经权重,并且非线性阻尼项可防止功能重建误差传播到下一个后退步骤。该方法不依赖于定点假设,也不假设控制有效性的时间导数是有界的(使用平均值定理时通常采用的假设)。闭环系统的所有信号均显示为最终一致的边界。仿真结果说明了该方法

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