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An FNN-Based adaptive iterative learning control for a class of nonlinear discrete-time systems

机译:一类非线性离散时间系统的基于FNN的自适应迭代学习控制

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In this paper, a fuzzy neural network is applied to design a discrete adaptive iterative learning controller for a class of nonlinear discrete-time systems. The fuzzy neural network is used as a function approximator to compensate the unknown certainty equivalent controller. The problem of function approximation error is solved by a technique of time-varying boundary layer. This boundary layer is then utilized to construct an auxiliary error function for the design of adaptive laws. In order to achieve a desired learning performance, the FNN parameter and the width of boundary layer will be tuned during the iteration processes. Based on a Lyapunov-like analysis, we show that all adjustable parameters as well as the internal signals remain bounded for all iterations and the output tracking error will asymptotically converge to a residual set whose size depends on the width of boundary layer as iteration goes to infinity.
机译:本文应用了模糊神经网络来设计用于一类非线性离散时间系统的离散自适应迭代学习控制器。 模糊神经网络用作函数近似器以补偿未知的确定性等效控制器。 通过时变边界层的技术解决了函数近似误差的问题。 然后利用该边界层构建用于设计自适应法的辅助误差函数。 为了实现期望的学习性能,在迭代过程期间将调谐FNN参数和边界层的宽度。 基于Lyapunov样分析,我们表明所有可调参数以及内部信号都保持界限,并且输出跟踪误差将渐近地会聚到其大小在边界层的宽度随着迭代而取决于边界层的宽度。 无限。

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