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Neural network based adaptive dynamic surface control for flexible-joint robots

机译:基于神经网络的柔性关节机器人自适应动态表面控制

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A neural network based adaptive dynamic surface controller is proposed for uncertain flexible-joint robot systems. The dynamic surface control method eliminates the problem of “explosion of complexity” existing in traditional backstepping approach by the addition of low pass filters. RBF neural networks are used to approximate the unknown nonlinearities of the model. Nonlinear damping items are used to overcome the external disturbances. Adaptive laws are designed to estimate the weight values of the neural networks and unknown parameters. From Lyapunov stability analysis, it is shown that the control strategy can guarantee the semi-global stability of the closed-loop system and arbitrarily small tracking error by adjusting the controller parameters. Simulation results are presented to validate the good tracking performance of the control system.
机译:针对不确定的柔性关节机器人系统,提出了一种基于神经网络的自适应动态表面控制器。动态表面控制方法通过添加低通滤波器消除了传统反推方法中存在的“复杂性爆炸”问题。 RBF神经网络用于近似模型的未知非线性。非线性阻尼项用于克服外部干扰。自适应定律旨在估计神经网络的权重值和未知参数。通过Lyapunov稳定性分析表明,该控制策略可以通过调节控制器参数来保证闭环系统的半全局稳定性和任意小的跟踪误差。仿真结果表明了控制系统的良好跟踪性能。

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