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Optimal Selection of the Forgetting Matrix Into an Iterative Learning Control Algorithm

机译:迭代学习控制算法中遗忘矩阵的最优选择

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摘要

A recursive optimal algorithm, based on minimizing the input error covariance matrix, is derived to generate the optimal forgetting matrix and the learning gain matrix of a P-type iterative learning control (ILC) for linear discrete-time varying systems with arbitrary relative degree. This note shows that a forgetting matrix is neither needed for boundedness of trajectories nor for output tracking. In particular, it is shown that, in the presence of random disturbances, the optimal forgetting matrix is zero for all learning iterations. In addition, the resultant optimal learning gain guarantees boundedness of trajectories as well as uniform output tracking in presence of measurement noise for arbitrary relative degree.
机译:推导了一种基于最小化输入误差协方差矩阵的递归最优算法,以生成具有任意相对度的线性离散时变系统的最优遗忘矩阵和P型迭代学习控制(ILC)的学习增益矩阵。此注释显示,轨迹的有界性或输出跟踪都不需要遗忘矩阵。特别地,示出了在存在随机干扰的情况下,对于所有学习迭代,最佳遗忘矩阵为零。另外,所得到的最佳学习增益保证了轨迹的有界性以及在任意相对程度的测量噪声存在下的均匀输出跟踪。

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