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Adaptive Iterative Learning Control with Initial State Learning for Nonlinear Parameterized-Systems

机译:非线性参数化系统初始学习的自适应迭代学习控制

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In this paper, for a class of non-linearly parameterized systems with time-varying parameters, an adaptive iterative learning control method based on initial state learning is proposed. by using the parameter separation and the initial state learning, a novel adaptive control strategy is designed to ensure the tracking error converge to zero in the mean-square sense on a finite time-interval. a sufficient condition for the convergence is also given by constructing a Lyapunov function. the approach can be applied to the nonlinear systems with time-varying parameters and a certain degree of orientation bias in the initial condition. Based on the convergence condition, the learning gain of initial learning principle, the gain of input learning principle and the gain of adaptive principle can be determined. the simulation example shows that the proposed learning algorithms are effective.
机译:本文提出了针对具有时变参数的一类非线性参数化系统,提出了一种基于初始状态学习的自适应迭代学习控制方法。 通过使用参数分离和初始状态学习,设计新的自适应控制策略,以确保在有限时间间隔内将跟踪误差收敛到均匀的均衡。 通过构建Lyapunov函数,还给出了收敛的足够条件。 该方法可以用时变参数和初始条件的一定程度的取向偏压应用于非线性系统。 基于收敛条件,初始学习原理的学习增益,可以确定输入学习原理的增益和自适应原理的增益。 仿真示例表明,所提出的学习算法是有效的。

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