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Stable adaptive controller design of robotic manipulators via neuro-fuzzy dynamic inversion

机译:神经模糊动态反演的机械臂稳定自适应控制器设计

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A stable adaptive controller design approach via neuro-fuzzy (NF) dynamic inversion is developed for the trajectory tracking of the robotic manipulator which can be identified in the Takagi-Sugeno (T-S) fuzzy framework with both structure and parameters identified through input/output (I/O) data from the robot control process. The dynamic NF (DNF) system aims to approximate the whole robot dynamics rather than its nonlinear components as is done by static neural networks (NNs). The dynamic inversion introduced for the controller design is constructed by the DNF system and will help the NF controller design because it does not require the assumption that the robot states should be on a compact set. The system stability and the convergence of tracking errors are guaranteed by Lyapunov stability theory, and the learning algorithm for the DNF system is obtained thereby. Finally, simulation studies are carried out to show the viability and effectiveness of the proposed control approach.
机译:针对神经机械手的轨迹跟踪,开发了一种通过神经模糊(NF)动态反演的稳定自适应控制器设计方法,可以在Takagi-Sugeno(TS)模糊框架中对其进行识别,并通过输入/输出识别结构和参数( (I / O)数据来自机械手控制过程。动态NF(DNF)系统的目的是逼近整个机器人动力学,而不是像静态神经网络(NNs)那样近似其非线性成分。为控制器设计引入的动态反转由DNF系统构建,并且将有助于NF控制器设计,因为它不需要假设机器人状态应在紧凑的集合上。利用Lyapunov稳定性理论保证了系统的稳定性和跟踪误差的收敛性,从而得到了DNF系统的学习算法。最后,进行仿真研究以显示所提出的控制方法的可行性和有效性。

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