Spatial Iterative Learning Control: Systems with input saturation

Merid Ljesnjanin, Y. Tan, D. Oetomo, C. Freeman
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引用次数: 4

Abstract

This paper proposes a novel Iterative Learning Control (ILC) framework for spatial tracking. Spatial tracking means that the temporal component is not fixed which violates the standing assumption on time intervals in traditional ILC. The proposed framework allows for the length of the time interval to change with each iteration. To relate the spatial information from the past to the present iteration, the concept of spatial projection is proposed. A class of nonlinear uncertain systems with input saturation is chosen for demonstration. An a appropriate ILC control law, exploiting the spatial projection idea, is proposed and the corresponding convergence analysis, based on the Composite Energy Function, is carried out. It is shown that spatial tracking is achieved under appropriate assumptions related to spatial projection and provided that the desired trajectory is realizable within the saturation bound. Finally, simulation results illustrate the predicted convergence.
空间迭代学习控制:输入饱和系统
提出了一种新的空间跟踪迭代学习控制(ILC)框架。空间跟踪意味着时间分量不固定,这违背了传统ILC对时间间隔的假设。建议的框架允许时间间隔的长度随每次迭代而改变。为了将过去的空间信息与现在的迭代联系起来,提出了空间投影的概念。选取了一类具有输入饱和的非线性不确定系统进行了论证。利用空间投影思想,提出了一种合适的ILC控制律,并基于复合能量函数进行了相应的收敛性分析。结果表明,在与空间投影相关的适当假设下,只要在饱和边界内可以实现所需的轨迹,就可以实现空间跟踪。最后,仿真结果验证了预测的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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