一种新的二维系统方法应用于时空动力学的迭代学习控制

B. Cichy, K. Gałkowski
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引用次数: 0

摘要

迭代学习控制(ILC)在线性和非线性动力学方面的基础理论和实验应用已经很好地建立起来。此方法专门针对在有限时间内重复相同操作并在连续执行之间进行重置的应用程序。每次执行都被称为一次审判,ILC背后的新原则是在选择当前审判输入时适当地使用以前审判的信息,以逐步提高审判的表现。在本文中,将ILC方法扩展到二维系统类的新的计算非常有效的结果,这些系统是由偏微分方程的某些离散化方法产生的,导致需要使用时空设置进行分析。所得到的控制律可以用线性矩阵不等式(lmi)来计算。最后给出了一个实例,并讨论了进一步研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new 2D systems approach applied to Tterative Learning Control of spatio-temporal dynamics
Iterative Learning Control (ILC) is now well established for linear and nonlinear dynamics in terms of both the underlying theory and experimental application. This approach is specifically targeted at applications where the same operation is repeated over a finite duration with resetting between successive executions. Each execution is known as a trial and the novel principle behind ILC is to suitably use information from previous trials in the selection of the current trial input with the objective of sequentially improving performance from trial-to-trial. In this paper, new computationally very efficient results on the extension of the ILC approach to the class of 2D systems that arise from certain methods of discretization of partial differential equations resulting in the need to use a spatio-temporal setting for analysis. The resulting control laws can be computed using Linear Matrix Inequalities (LMIs). An illustrative example is also given and areas for further research discussed.
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