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Iterative learning control of linear continuous systems with variable initial states based on 2-D system theory

机译:基于二维系统理论的变初始状态线性连续系统的迭代学习控制

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This paper is concerned with the variable initial states problem in iterative learning control (ILC) for linear continuous systems. Firstly, the properties of the trajectory of 2-D continuous-discrete Roesser model are analyzed by using Lyapunov's method. Then, for any variable initial states which absolutely converge to the desired initial state, some sufficient conditions in the form of linear matrix inequalities (LMI) are given to ensure the convergence of the PD-type ILC rules. It implies that the ILC rules can be used to achieve the perfect tacking for variable initial states, even if the system dynamic is unknown. Finally, two numerical examples are given to illustrate the perfect tracking performance with exponentially convergent initial states.
机译:本文涉及线性连续系统迭代学习控制(ILC)中的变量初始状态问题。首先,利用Lyapunov方法分析了二维连续离散Roesser模型的轨迹特性。然后,对于绝对会收敛到所需初始状态的任何可变初始状态,以线性矩阵不等式(LMI)的形式给出一些足够的条件,以确保PD型ILC规则的收敛。这意味着即使系统动态未知,也可以使用ILC规则来实现对可变初始状态的完美跟踪。最后,给出了两个数值示例来说明初始状态呈指数收敛的理想跟踪性能。

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