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Learning Speed Enhancement of Iterative Learning Control with Advanced Output Data based on Parameter Estimation

机译:基于参数估计的高级输出数据增强迭代学习控制的学习速度

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Learning speed enhancement is one of the most important issues in learning control. If we can improve both learning speed and tracking performance, it will be helpful to the applicability of learning control. Considering these facts, in this paper, we propose a learning speed enhancement scheme for iterative learning control with advanced output data (ADILC) based on parameter estimation. We consider linear discrete-time non-minimum phase (NMP) systems, whose model is unknown, except for the relative degree and the number of NMP zeros. In each iteration, estimates of the impulse response are obtained from input-output relationship. Then, learning gain matrix is calculated from the estimates, and by using new learning gain matrix, learning speed can be enhanced. Simulation results show that the learning speed has been enhanced by applying the proposed method.
机译:学习速度的提高是学习控制中最重要的问题之一。如果我们能够同时提高学习速度和跟踪性能,将有助于学习控制的适用性。考虑到这些事实,本文提出了一种基于参数估计的高级输出数据(ADILC)迭代学习控制的学习速度增强方案。我们考虑线性离散时间非最小相位(NMP)系统,除了相对度和NMP零个数之外,其模型未知。在每次迭代中,从输入-输出关系中获得脉冲响应的估计值。然后,根据估计值计算学习增益矩阵,并且通过使用新的学习增益矩阵,可以提高学习速度。仿真结果表明,该方法可以提高学习速度。

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