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Almost sure convergence of iterative learning control for stochastic systems

机译:随机系统的迭代学习控制的几乎确定的收敛

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摘要

This paper proposes an iterative learning control (ILC) algorithm with the purpose of controling the output of a linear stochastic system presented in state space form to track a desired realizable trajectory. It is proved that the algorithm converges to the optimal one a.s. under the condition that the product input-output coupling matrices are full-column rank in addition to some assumptions on noises. No other knowledge about system matrices and covariance matrices is required.
机译:提出了一种迭代学习控制(ILC)算法,其目的是控制状态空间形式的线性随机系统的输出,以跟踪所需的可实现轨迹。实践证明,该算法收敛于最优算法。除了对噪声的一些假设外,在乘积输入输出耦合矩阵为全列秩的条件下。不需要有关系统矩阵和协方差矩阵的其他知识。

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