An adaptive learning control approach

Z. Geng, M. Jamshidi, R. Carroll, R. Kisner
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引用次数: 5

Abstract

An adaptive learning control approach is proposed which combines a mechanism to improve the control input sequence as well as to improve the learning control scheme based on the knowledge learned about the unknown system and environment. The iterative learning control problem is treated from the 2D system point of view. A 2D model for a class of iterative learning control system is formulated. A learning gain estimator algorithm based on the 2D model is presented. The overall learning control system structure is given. The proposed learning control scheme does not require prior knowledge of the controlled system and has the ability to generalize the knowledge learned from one task operation to other tasks. This scheme can be applied to nonlinear system control problems. To demonstrate the feasibility of the proposed learning algorithm, simulation results on learning control for a three-water-tank system are given. The results show an excellent learning performance, even for nonrepetitive tasks.<>
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一种自适应学习控制方法
提出了一种自适应学习控制方法,该方法结合了改进控制输入序列的机制和改进基于未知系统和环境知识的学习控制方案。从二维系统的角度来处理迭代学习控制问题。建立了一类迭代学习控制系统的二维模型。提出了一种基于二维模型的学习增益估计算法。给出了学习控制系统的总体结构。提出的学习控制方案不需要被控系统的先验知识,并且能够将从一个任务操作中学到的知识推广到其他任务。该方法可应用于非线性系统控制问题。为了验证所提学习算法的可行性,给出了一个三水箱系统的学习控制仿真结果。结果显示,即使在非重复性任务中,它也有出色的学习表现。
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