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首页> 外文期刊>IEEE Transactions on Robotics >Adaptive Repetitive Learning Control of Robotic Manipulators Without the Requirement for Initial Repositioning
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Adaptive Repetitive Learning Control of Robotic Manipulators Without the Requirement for Initial Repositioning

机译:不需要初始重新定位的机器人机械手的自适应重复学习控制

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摘要

This paper presents adaptive repetitive learning control for trajectory tracking of uncertain robotic manipulators. Through the introduction of a novel Lyapunov-like function, the proposed method only requires the system to start from where it stopped at the last cycle, and avoids the strict requirement for initial repositioning for all the cycles. In addition, it is more applicable, as it only requires the variables to be learned in an iteration-independent manner, rather than satisfying the periodicity requirement in a number of the conventional methods. With the adoption of fully saturated learning, all the signals in the closed loop are guaranteed to be bounded, and the iterative trajectories are proven to follow the profiles of desired trajectories over the entire operation interval. The effectiveness of the proposed method is shown through extensive numerical simulation results.
机译:本文提出了用于不确定机器人的轨迹跟踪的自适应重复学习控制。通过引入新颖的类Lyapunov函数,所提出的方法仅要求系统从上一个循环停止处开始,并且避免了对所有循环进行初始重新定位的严格要求。另外,它更适用,因为它仅要求以独立于迭代的方式学习变量,而不是满足许多常规方法中的周期性要求。通过采用完全饱和的学习,保证了闭环中的所有信号都是有界的,并且迭代轨迹被证明在整个操作间隔内遵循所需轨迹的轮廓。通过广泛的数值模拟结果表明了该方法的有效性。

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