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首页> 外文期刊>IEEE transactions on systems, man and cybernetics. Part C >Optimal design of CMAC neural-network controller for robot manipulators
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Optimal design of CMAC neural-network controller for robot manipulators

机译:机器人机械手CMAC神经网络控制器的优化设计。

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摘要

This paper is concerned with the application of quadratic optimization for motion control to feedback control of robotic systems using cerebellar model arithmetic computer (CMAC) neural networks. Explicit solutions to the Hamilton-Jacobi-Bellman (H-J-B) equation for optimal control of robotic systems are found by solving an algebraic Riccati equation. It is shown how the CMAC can cope with nonlinearities through optimization with no preliminary off-line learning phase required. The adaptive-learning algorithm is derived from Lyapunov stability analysis, so that both system-tracking stability and error convergence can be guaranteed in the closed-loop system. The filtered-tracking error or critic gain and the Lyapunov function for the nonlinear analysis are derived from the user input in terms of a specified quadratic-performance index. Simulation results from a two-link robot manipulator show the satisfactory performance of the proposed control schemes even in the presence of large modeling uncertainties and external disturbances.
机译:本文涉及运动控制的二次优化在使用小脑模型算术计算机(CMAC)神经网络的机器人系统的反馈控制中的应用。通过求解代数Riccati方程,可以找到用于机械手系统最优控制的Hamilton-Jacobi-Bellman(H-J-B)方程的显式解。它显示了CMAC如何通过优化来解决非线性问题,而无需初步的离线学习阶段。自适应学习算法是从Lyapunov稳定性分析中得出的,因此在闭环系统中可以保证系统跟踪的稳定性和误差的收敛性。根据指定的二次性能指标,从用户输入中得出滤波后的跟踪误差或批评者增益以及用于非线性分析的Lyapunov函数。来自两连杆机器人操纵器的仿真结果表明,即使存在较大的模型不确定性和外部干扰,所提出的控制方案也具有令人满意的性能。

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