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An observer-based model reference adaptive iterative learning controller for MIMO nonlinear systems

机译:用于MIMO非线性系统的基于观察者的模型参考自适应迭代学习控制器

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TIn this paper, an observer based model reference adaptive iterative learning control (MRAILC) is proposed for a general class of uncertain MIMO nonlinear systems. Since the system state vector is assumed to be not measurable, a state tracking error observer is introduced for state estimation. Based on the proposed observer, we apply a model reference adaptive control technique to derive an output observation error model. In order to implement the MRAILC without using differentiators, the output observation error model will be further transformed into a new formulation by an averaging filter matrix and some auxiliary signals vector. There are three components in this MRAILC. The main learning component which performs as a nonlinear function approximator is constructed by an MIMO filtered fuzzy neural network using the system state estimation vector as the input vector. To overcome the lumped uncertainties vector from function approximation error vector and state estimation error vector, a normalization signal is applied as a bounding function to design a robust learning component. Finally, a stabilization learning component is used to guarantee the boundedness of internal signals. By using Lyapunov-like analysis, we show that all the adjustable parameters as well as internal signals remain bounded for all iterations. The norm of output tracking error vector will asymptotically converge to a tunable residual set.
机译:锡本文,提出了一种基于观察者的模型参考自适应迭代学习控制(MRAILC),用于一般的不确定MIMO非线性系统。由于假设系统状态向量不可测量,因此引入了状态追踪的状态跟踪错误观察者。基于所提出的观察者,我们应用模型参考自适应控制技术来导出输出观察误差模型。为了在不使用差的情况下实现MRailc,输出观察误差模型将通过平均滤波器矩阵和一些辅助信号向量进一步转换为新的制剂。这个Mrailc中有三个组件。作为非线性函数近似器执行的主要学习组件由使用系统状态估计向量作为输入向量的MIMO滤波模糊神经网络构成。为了克服来自功能近似误差矢量和状态估计误差向量的集总不确定性矢量,将归一化信号应用于设计稳定学习组件的边界函数。最后,使用稳定学习组件来保证内部信号的界限。通过使用Lyapunov样分析,我们表明所有可调参数以及内部信号都存在于所有迭代的界限。输出跟踪误差向量的规范将渐近地收敛到可调谐的残差集。

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