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Selection of the Learning Gain Matrix of an Iterative Learning Control Algorithm in Presence of Measurement Noise

机译:存在测量噪声的迭代学习控制算法学习增益矩阵的选择

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Arbitrary high precision output tracking is one of the most desirable control objectives found in industrial applications regardless of measurement errors. The main purpose of this paper is to supply to the iterative learning control (ILC) designer guidelines to select the corresponding learning gain in order to achieve this control objective. For example, if certain conditions are met, then it is necessary for the learning gain to converge to zero in the learning iterative domain. In particular, this paper presents necessary and sufficient conditions for boundedness of trajectories and uniform tracking in presence of measurement noise and a class of random reinitialization errors for a simple ILC algorithm. The system under consideration is a class of discrete-time affine nonlinear systems with arbitrary relative degree and arbitrary number of system inputs and outputs. The state function does not need to satisfy a Lipschitz condition. This work also provides a recursive algorithm that generates the appropriate learning gain functions that meet the arbitrary high precision output tracking objective. The resulting tracking output error is shown to converge to zero at a rate inversely proportional to square root of the number of learning iterations in presence of measurement noise and a class of reinitialization errors. Two illustrative numerical examples are presented.
机译:无论测量误差如何,任意高精度输出跟踪都是工业应用中最理想的控制目标之一。本文的主要目的是向迭代学习控制(ILC)设计者指南提供选择相应的学习增益的方法,以实现此控制目标。例如,如果满足某些条件,则学习增益必须在学习迭代域中收敛到零。特别是,本文提出了一种简单的ILC算法,在存在测量噪声和一类随机重新初始化误差的情况下,轨迹的有界性和均匀跟踪的充要条件。所考虑的系统是一类离散时间仿射非线性系统,具有任意相对度和任意数量的系统输入和输出。状态函数不需要满足Lipschitz条件。这项工作还提供了一种递归算法,该算法可生成满足任意高精度输出跟踪目标的适当学习增益函数。结果表明,在存在测量噪声和一类重新初始化错误的情况下,最终的跟踪输出误差以与学习迭代次数的平方根成反比的速率收敛到零。给出了两个说明性的数值示例。

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