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A statistical analysis of certain iterative learning control algorithms

机译:某些迭代学习控制算法的统计分析

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Iterative learning control (ILC) is a technique used to improve the tracking performance of systems carrying out repetitive tasks, which are affected by deterministic disturbances. The achievable performance is greatly degraded, however, when non-repeating, stochastic disturbances are present. This paper aims to compare a number of different ILC algorithms, proposed to be more robust to the presence of these disturbances, first by a statistical analysis and then by simulation results and their application to a linear motor. New expressions for the expected value and variance of the controlled error are developed for each algorithm. The different algorithms are then tested in simulation and finally applied to the linear motor system to test their performance in practice. A filtered ILC algorithm is proposed when the noise and desired output spectra are separated. Otherwise an algorithm with a decreasing gain gives good robustness to noise and achievable precision but at a slower convergence rate.
机译:迭代学习控制(ILC)是一种用于提高执行重复性任务(受确定性干扰影响)的系统的跟踪性能的技术。但是,当存在非重复的随机干扰时,可达到的性能会大大降低。本文旨在比较多种不同的ILC算法,这些算法被建议对这些干扰的存在更加鲁棒,首先是通过统计分析,然后是通过仿真结果并将其应用于线性电动机。为每种算法开发了期望值和受控误差方差的新表达式。然后在仿真中测试不同的算法,最后将它们应用于线性电动机系统以在实践中测试其性能。当噪声和期望的输出频谱分离时,提出了一种滤波的ILC算法。否则,增益递减的算法将为噪声提供良好的鲁棒性,并达到可实现的精度,但收敛速度较慢。

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