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Robust adaptive control of robotic manipulators using neural networks: Application to a two link planar robot

机译:使用神经网络的机器人机械臂的鲁棒自适应控制:在两连杆平面机器人中的应用

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A PD neural network (NN)-based adaptive controller design is presented in this paper for trajectory tracking of robotic manipulators subject to external disturbances and noise measurement. The neural networks are employed to approximate the nonlinearities in dynamic model of the robot to improve the performance of the classical PD controller based on the filtered error approach. The augmented Lyapunov function is used to guarantee the boundedness of the tracking error and derive the adaptation law for the neural network weights. This paper also presents the effect of robust modifications such as σ-modification and e-modification on the performance of adaptation laws in the approximation process and the performance of the controller. The effectiveness of the controller is demonstrated through computer simulation on the two-link planer robot.
机译:本文提出了一种基于PD神经网络(NN)的自适应控制器设计,用于受外部干扰和噪声测量的机器人机械手的轨迹跟踪。利用神经网络对机器人动力学模型中的非线性进行近似,以基于滤波后的误差方法来改善经典PD控制器的性能。增强的Lyapunov函数用于保证跟踪误差的有界性,并导出神经网络权重的自适应律。本文还介绍了诸如σ修改和e修改之类的鲁棒修改对逼近过程中自适应律性能和控制器性能的影响。通过在两连杆刨床机器人上进行计算机仿真,证明了该控制器的有效性。

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