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Bounded-input iterative learning control: Robust stabilization via a minimax approach

机译:有界输入的迭代学习控制:通过极小极大方法进行鲁棒稳定

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In this paper, we consider the design problem of making the convergence of the bounded-input, multi-input iterative learning controller presented in our previous work robust to errors in the model-based value of the input-output Jacobian matrix via a minimax (min-max or 'minimize the worst case') approach. We propose to minimize the worst case (largest) value of the infinity-norm of the matrix whose norm being less then unity implies convergence of the controller. This matrix is the one associated with monotonicity of a sequence of input error norms. The input-output Jacobian uncertainty is taken to be an additive linear one. Theorem 3.1 and its proof show that the worst-case infinity-norm is actually minimized by choosing either the inverse of the centroid of the set of possible input-output Jacobians or a zero matrix. And an explicit expression is given for both the criteria used to choose between the two matrices and the resulting minimum worst-case infinity norm. We showed previously that the matrix norm condition associated with monotonicity of a sequence of output-error norms is not sufficient to assure convergence of the bounded-input controller. The importance of knowing which norm condition is the relevant one is demonstrated by showing that the set of minimizers of the minimax problem formulated with the wrong norm does not contain in general minimizers of the maximum relevant norm and moreover can lead to a gain matrix that destroys the assured convergence of the bounded-input controller given in previous work. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:在本文中,我们考虑了一个设计问题,即使我们之前的工作中提出的有界输入,多输入迭代学习控制器的收敛通过极小极大()承受输入输出雅可比矩阵的基于模型的值的误差( min-max或“最小化最坏情况”)方法。我们建议最小化矩阵无穷范数的最坏情况(最大)值,其范数小于1表示控制器收敛。该矩阵是与输入错误范数序列的单调性相关的矩阵。输入-输出雅可比不确定性被认为是线性加法。定理3.1及其证明表明,通过选择可能的输入输出雅可比集的质心的逆或零矩阵,实际上可以使最坏情况下的无穷范数最小。对于在两个矩阵之间进行选择的标准以及由此产生的最小最坏情况无穷范数,给出了明确的表达式。先前我们已经证明,与输出误差范数序列的单调性相关的矩阵范数条件不足以确保有界输入控制器的收敛。通过表明用错误的范式表述的minimax问题的最小化集通常不包含最大相关范数的最小化集,从而证明了知道哪个准则条件是相关的重要性,而且可以导致增益矩阵破坏确保先前工作中的有限输入控制器收敛。版权所有(c)2016 John Wiley&Sons,Ltd.

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