Learning from Adaptive Neural Output Feedback Control of Robot Manipulators

Shi‐Lu Dai, Min Wang, Cong Wang, Liejun Li
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引用次数: 1

Abstract

Abstract This paper studies the problem of learning from adaptive neural network (NN) control of a one-link robot manipulator including motor dynamics in uncertain dynamical environments. With the employment of a newly state transformation and a high-gain observer, the one-link robot system is transformed into a norm form, and then only one NN is employed to approximate the lumped uncertain system nonlinearity in the adaptive control design. Partial persistent excitation (PE) condition of radial basis function (RBF) NNs is satisfied during tracking control to a recurrent reference trajectory. Under the PE condition, the proposed adaptive NN control is shown to be capable of acquiring knowledge on the uncertain robot dynamics in the stable control process and of storing the learned knowledge in memory. Subsequently, a novel neural learning control technique exploiting the learned knowledge without readapting to the unknown robot dynamics is developed to achieve closed-loop stability and improved control performance. Simulation studies are performed to demonstrate the effectiveness of the proposed control technique.
基于自适应神经输出反馈控制的机器人机械臂学习
摘要研究了不确定动态环境下含电机动力学的单连杆机器人的神经网络学习控制问题。通过引入新的状态变换和高增益观测器,将单连杆机器人系统转化为范数形式,然后在自适应控制设计中仅使用一个神经网络来逼近集总不确定系统非线性。径向基函数神经网络在对循环参考轨迹的跟踪控制中满足部分持续激励条件。在PE条件下,所提出的自适应神经网络控制能够在稳定控制过程中获取不确定机器人动力学的知识,并将学习到的知识存储在存储器中。在此基础上,提出了一种新的神经学习控制技术,利用学习到的知识,不需要重新适应未知的机器人动力学,从而实现闭环稳定,提高控制性能。仿真研究证明了所提出的控制技术的有效性。
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