具有初始误差和全状态约束的长行程混合机器人的自适应神经网络迭代学习控制

Qunpo Liu, Zhuoran Zhang, Jiakun Li, Xuhui Bu, Naohiko Hanajima
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引用次数: 0

摘要

对初始误差和约束限制的研究是不确定机器人系统控制领域的主要研究方向之一。本文提出了一种基于径向基函数(RBF)神经网络的自适应迭代学习控制(AILC)方法,以解决具有随机初始误差和完全状态约束的长行程混合机器人系统的轨迹跟踪问题。RBF 神经网络用于近似未知的非线性项,网络权重通过包含投影机制的迭代学习法进行更新。此外,还采用了稳健学习策略,以补偿神经网络的近似误差和每次迭代都会变化的外部干扰。为了放宽传统迭代学习控制(ILC)对相同初始条件的要求,基于时变边界层构建了等效误差函数。切线型障碍李雅普诺夫函数(BLF)旨在确保机器人系统的关节位置和速度在预定范围内。通过基于势垒复合能量函数(BCEF)的稳定性分析,可以证明闭环系统中所有信号的有界性和机器人系统的跟踪误差都会渐进地收敛到一个可调节的残差集。最后,通过在 MATLAB 平台上进行仿真实验,结果表明该方法有效克服了系统的随机初始误差,确保系统满足全状态约束,实现了高精度轨迹跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive neural network iterative learning control of long-stroke hybrid robots with initial errors and full state constraints
Research on initial errors and constraint restrictions is one of the main research directions in the field of control of uncertain robotic systems. An adaptive iterative learning control (AILC) method based on radial basis function (RBF) neural network is proposed to address the trajectory tracking problem of the long-stroke hybrid robot system with random initial errors and full state constraints. The RBF neural network is used to approximate the unknown nonlinear terms, and the network weights are updated using an iterative learning law that incorporates a projection mechanism. Additionally, a robust learning strategy is used to compensate for both the approximation error of the neural network and the external disturbances that vary with each iteration. To relax the requirement of traditional iterative learning control (ILC) for identical initial condition, an equivalent error function is constructed based on the time-varying boundary layer. The tangent-type barrier Lyapunov function (BLF) is designed to ensure that the joint position and speed of the robot system are bounded within a predetermined range. Through stability analysis based on barrier composite energy function (BCEF), it can be proved that the boundedness of all signals in the closed-loop system and the tracking error of the robot system will converge to an adjustable residual set asymptotically. Finally, through simulation experiments conducted on the MATLAB platform, the results demonstrate that the method overcomes the random initial errors of the system effectively, ensures that the system satisfies the full-state constraints, and realizes high-precision trajectory tracking.
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