误差非线性扰动观测器约束机械臂的自适应模糊神经网络平滑切换增益动态面控制

IF 3.4 2区 数学 Q1 MATHEMATICS, APPLIED
Qing Yang , Haisheng Yu , Xiangxiang Meng , Wenqian Yu
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引用次数: 0

摘要

针对全状态约束和输入饱和条件下的机械臂,研究了一种基于误差的非线性扰动观测器的自适应模糊神经网络平滑切换增益动态面控制方法。首先,提出了一种平滑切换增益策略来取代传统的静态控制增益。该策略可以根据跟踪误差及其导数动态更新控制增益,从而优化不同响应阶段的跟踪性能。其次,针对传统非线性扰动观测器在跟踪误差较大时产生有害观测峰的问题,设计了基于误差的非线性扰动观测器。该观测器根据跟踪误差自适应调整观测器增益,有效地减轻了有害的观测峰。在此基础上,引入自适应模糊神经网络策略来逼近模型的不确定性。最后,分别建立了辅助系统和非对称时变势垒Lyapunov函数来处理输入饱和和非对称时变全态约束。通过一个二自由度机械手的对比实验,验证了所提策略能有效地将系统的状态和输入约束在预定义的范围内。实验结果进一步验证了所提策略能有效优化跟踪性能,提高系统抗扰性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive fuzzy neural network-based smooth-switching gain dynamic surface control for constrained manipulator with error-based nonlinear disturbance observer
This paper studies an adaptive fuzzy neural network-based smooth-switching gain dynamic surface control with an error-based nonlinear disturbance observer for the manipulator subject to the full-state constraints and input saturation. First, the smooth-switching gain strategy is proposed to replace the conventional static control gain. This novel strategy can dynamically update the control gains according to the tracking error and its derivative, thereby optimizing tracking performance across different response phases. Second, considering that the conventional nonlinear disturbance observer generates harmful observation peaks when there is a large tracking error, an error-based nonlinear disturbance observer is designed. This observer adaptively adjust the observer gain based on the tracking error, effectively mitigating harmful observation peaks. Furthermore, the adaptive fuzzy neural network strategy is introduced to approximate the modeling uncertainties. Finally, an auxiliary system and an asymmetric time-varying barrier Lyapunov function are established to handle the input saturation and the asymmetric time-varying full-state constraints, respectively. The comparative experiment of a two-degree-of-freedom manipulator validate that the proposed strategy can effectively constrain the state and input of the system within predefined limits. The experimental results further validate that the proposed strategy can effectively optimise the tracking performance and increase the disturbance rejection performance of the system.
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来源期刊
CiteScore
7.90
自引率
10.00%
发文量
755
审稿时长
36 days
期刊介绍: Applied Mathematics and Computation addresses work at the interface between applied mathematics, numerical computation, and applications of systems – oriented ideas to the physical, biological, social, and behavioral sciences, and emphasizes papers of a computational nature focusing on new algorithms, their analysis and numerical results. In addition to presenting research papers, Applied Mathematics and Computation publishes review articles and single–topics issues.
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