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Iterative learning control as a method of experiment design for improved system identification

机译:迭代学习控制作为改进系统识别的实验设计方法

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摘要

Iterative learning control (ILC) and repetitive control (RC) use iterations in hardware that adjust the input to a system in order to converge to zero tracking error following a desired system output. ILC experiments on a robot improved the tracking accuracy during a high-speed manoeuvre by a factor of 1000 in approximately 12 iterations. Such performance requires knowing system phase information accurate to within ±90° or better. Otherwise, the iterations appear to start diverging. During divergence, they produce inputs that particularly excite unmodelled or poorly modelled dynamics, producing experimental data that is focussed on what is wrong with the current model. This article investigates use of RC/ILC for the purpose of developing good data sets for identification. This reverses the normal objective in RC/ILC to make convergence to zero tracking error as robust to model error as possible. Instead, for identification, one aims to make the convergence of iterations as sensitive as possible to model error. In system identification, one essentially always misses some parasitic poles or residual modes. The method systematically produces data that specifically targets such unmodelled modes. Numerical examples are given.
机译:迭代学习控制(ILC)和重复控制(RC)使用硬件中的迭代来调整系统的输入,以便在期望的系统输出后收敛到零跟踪误差。在机器人上进行的ILC实验在大约12次迭代中将高速机动期间的跟踪精度提高了1000倍。为了获得这种性能,需要知道系统相位信息精确到±90°或更好。否则,迭代似乎开始发散。在发散期间,它们产生的输入尤其会激发未建模或建模欠佳的动力学,从而产生侧重于当前模型出问题的实验数据。本文研究RC / ILC的用途,以开发用于识别的良好数据集。这逆转了RC / ILC中的正常目标,以使收敛到零跟踪误差对模型误差的鲁棒性最大化。取而代之的是,为了进行识别,目的是使迭代的收敛对模型错误尽可能敏感。在系统识别中,人们基本上总是会遗漏一些寄生极点或残留模式。该方法系统地产生专门针对这种未建模模式的数据。给出了数值示例。

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