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Asymptotic Tracking for Uncertain Dynamic Systems Via a Multilayer Neural Network Feedforward and RISE Feedback Control Structure

机译:多层神经网络前馈和RISE反馈控制结构对不确定动态系统的渐近跟踪

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摘要

The use of a neural network (NN) as a feedforward control element to compensate for nonlinear system uncertainties has been investigated for over a decade. Typical NN-based controllers yield uniformly ultimately bounded (UUB) stability results due to residual functional reconstruction inaccuracies and an inability to compensate for some system disturbances. Several researchers have proposed discontinuous feedback controllers (e.g., variable structure or sliding mode controllers) to reject the residual errors and yield asymptotic results. The research in this paper describes how a recently developed continuous robust integral of the sign of the error (RISE) feedback term can be incorporated with a NN-based feedforward term to achieve semi-global asymptotic tracking. To achieve this result, the typical stability analysis for the RISE method is modified to enable the incorporation of the NN-based feedforward terms, and a projection algorithm is developed to guarantee bounded NN weight estimates.
机译:十多年来,一直在研究使用神经网络(NN)作为前馈控制元件来补偿非线性系统的不确定性。典型的基于NN的控制器由于残留的功能重建不准确以及无法补偿某些系统干扰而产生统一的最终有界(UUB)稳定性结果。几位研究人员已经提出了不连续的反馈控制器(例如,可变结构或滑模控制器)来拒绝残留误差并产生渐近结果。本文的研究描述了如何将最近开发的误差符号(RISE)反馈项的连续鲁棒积分与基于NN的前馈项结合起来,以实现半全局渐近跟踪。为了获得此结果,对RISE方法的典型稳定性分析进行了修改,以允许结合基于NN的前馈项,并且开发了一种投影算法来保证有界的NN权重估计。

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