Integral Concurrent Learning-Based Accelerated Gradient Adaptive Control of Uncertain Euler-Lagrange Systems

Duc M. Le, O. Patil, Patrick M. Amy, W. Dixon
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引用次数: 1

Abstract

Recent results in the adaptive control literature have made connections to methods in optimization and have led to new adaptive update laws based on accelerated gradient methods. Accelerated gradient methods such as Nesterov’s accelerated gradient in numerical optimization have been shown to yield faster convergence than standard gradient methods. However, these results either assume available measurements of the regression error or do not guarantee convergence of the parameter estimation error unless the restrictive persistence of excitation condition is satisfied. In this paper, a new integral concurrent learning (ICL)-based accelerated gradient adaptive update law is developed to achieve trajectory tracking and real-time parameter identification for general uncertain Euler-Lagrange systems. The accelerated gradient adaptation is a higher-order scheme composed of two coupled adaptation laws. A Lyapunov-based method is used to guarantee the closed-loop error system yields global exponential stability under a less restrictive finite excitation condition. A comparative simulation study is performed on a two-link robot manipulator to demonstrate the efficacy of the developed method. Results show the higher-order scheme outperforms standard and ICL-based adaption by 19.6% and 11.1%, respectively, in terms of the root mean squared parameter estimation errors.
基于积分并发学习的不确定Euler-Lagrange系统加速梯度自适应控制
自适应控制文献的最新结果与优化方法联系在一起,并导致了基于加速梯度方法的新的自适应更新规律。加速梯度方法,如Nesterov的加速梯度在数值优化中显示出比标准梯度方法更快的收敛速度。然而,这些结果要么假设回归误差的可用测量值,要么不保证参数估计误差的收敛,除非满足激励条件的限制性持久性。本文提出了一种新的基于积分并行学习(ICL)的加速梯度自适应更新律,用于实现一般不确定Euler-Lagrange系统的轨迹跟踪和实时参数辨识。加速梯度自适应是由两个耦合自适应律组成的高阶格式。采用基于李雅普诺夫的方法保证闭环误差系统在约束较少的有限激励条件下具有全局指数稳定性。以双连杆机器人为例进行了对比仿真研究,验证了所提方法的有效性。结果表明,高阶方案在均方根参数估计误差方面分别比标准方案和基于icl的自适应方案高19.6%和11.1%。
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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