Application of Iterative Learning Methods to Control of a LEGO Wheeled Mobile Robot

Robert Maniarski, W. Paszke, M. Patan
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引用次数: 3

Abstract

Iterative Learning Control (ILC) is a very powerful control technique that iteratively improves the transient behaviour of systems that are repetitive in nature. In this paper it is shown how ILC algorithm is designed and implemented to improve the tracking trajectory performance of mobile robot with a differential drive. Two step design procedure is proposed where a feedback controller is chosen as a classical PID controller and involves some performance specification to attenuate non-repetitive disturbances and noises. Then, as the second step, the learning filter is determined by an appropriate application of a plant inversion method. It turns out that convergence and learning performance of this ILC scheme can be obtained for a physical system and hence practical usefulness of the scheme is verified experimentally on Lego EV3-based mobile robot.
迭代学习方法在LEGO轮式移动机器人控制中的应用
迭代学习控制(ILC)是一种非常强大的控制技术,它可以迭代地改善本质上重复的系统的瞬态行为。本文介绍了如何设计和实现ILC算法来提高差动驱动移动机器人的跟踪轨迹性能。提出了两步设计过程,其中选择反馈控制器作为经典PID控制器,并包含一些性能规范以衰减非重复干扰和噪声。然后,作为第二步,通过适当应用植物反演方法确定学习滤波器。结果表明,该ILC方案在物理系统上具有良好的收敛性和学习性能,并在基于Lego ev3的移动机器人上验证了该方案的实用性。
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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