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Model and experience-based initial input construction for iterative learning control

机译:基于模型和基于经验的迭代学习控制初始输入构造

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摘要

The initial choice of input in iterative learning control (ILC) generally has a significant effect on the error incurred over subsequent trials. In this paper, techniques are developed that use experimental data gathered over previous applications of ILC in order to generate an initial input signal for the tracking of a new reference trajectory. A model-based approach is then incorporated to overcome the limitation of insufficient previous experimental data, and a robust design procedure is developed. Experimental evaluation results are obtained using a gantry robot facility. Copyright © 2010 John Wiley & Sons, Ltd.
机译:迭代学习控制(ILC)中输入的初始选择通常会对后续试验产生的错误产生重大影响。在本文中,开发了一些技术,这些技术使用在ILC以前的应用程序中收集的实验数据来生成用于跟踪新参考轨迹的初始输入信号。然后采用基于模型的方法来克服以前的实验数据不足的局限性,并开发了一种可靠的设计程序。实验评估结果是使用龙门机器人设备获得的。版权所有©2010 John Wiley&Sons,Ltd.

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