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Composite Learning for Trajectory Tracking Control of Robot Manipulators with Output Constraints

机译:具有输出约束的机械臂轨迹跟踪控制的复合学习

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In this paper, a trajectory tracking scheme for robot manipulators with unknown dynamics is investigated, with the consideration of output constraints as well as small bounded external disturbances. Firstly, a modified backstepping control scheme is employed to control the robot manipulators where in the first step of the design a tan-type barrier Lyapunov candidate is chosen in order to tackle the constraint problem. Secondly, the philosophy of dynamic surface control is incorporated to implement the calculation of prediction errors, which can also reduce “explosion of complexity” of the backstepping scheme. In addition, composite learning is introduced for a better estimation of unknown parameters, and for canceling out the uncertainties of the robot manipulators. Stability analysis shows that the proposed control scheme guarantees a small bounded tracking error with parameter convergence in the absence of the stringent persistent excitation condition. Finally, a simulation is conducted and the results demonstrate the superiority of the proposed controller in the aspects of tracking capability and parameter estimation.
机译:本文研究了一种具有未知动力学的机器人机械手的轨迹跟踪方案,该方案考虑了输出约束以及有限的外部干扰。首先,采用改进的反推控制方案来控制机器人操纵器,其中在设计的第一步中,选择棕褐色势垒李雅普诺夫候选者以解决约束问题。其次,结合动态表面控制的原理来实现预测误差的计算,这也可以减少反推方案的“复杂性爆炸”。另外,为了更好地估计未知参数并消除机器人操纵器的不确定性,引入了复合学习。稳定性分析表明,在没有严格持续激励条件的情况下,所提出的控制方案在参数收敛的情况下保证了较小的有界跟踪误差。最后,进行了仿真,结果证明了所提出的控制器在跟踪能力和参数估计方面的优越性。

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