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Experimental studies on robustness of a learning method with a forgetting factor for robotic motion control

机译:一种遗忘因子造成机器人运动控制的学习方法鲁棒性的实验研究

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P-type learning control algorithms for manipulators are quite simple and easily implemented compared with the D-type, since differentiation of velocity signals is unnecessary. When initialization errors, fluctuations of dynamics, and measurement noise exist, the convergence of trajectories to a neighborhood of a given ideal trajectory is uncertain in the P-type algorithm. However, manipulator motion trajectories in P-type learning control that includes a forgetting factor are uniformly bounded. Moreover, if command input data in a long-term memory are updated selectively after every few operational trials, output trajectories converge to a neighborhood of the desired one. In this paper, experimental results are presented, which show the robustness and convergence of this proposed method, and the best choice of a forgetting factor is discussed based on these experimental results.
机译:与D型相比,操纵器的P型学习控制算法非常简单且容易地实现,因为不需要速度信号的分化。 当初始化误差,动态波动和测量噪声存在时,在P型算法中对给定理想轨迹的邻域的轨迹的收敛性是不确定的。 然而,包括遗忘因子的p型学习控制中的操纵器运动轨迹是均匀的界限。 此外,如果在每次执行试验之后选择性地更新长期存储器中的命令输入数据,则输出轨迹会聚到所需的邻域。 在本文中,提出了实验结果,这表明了这种方法的鲁棒性和收敛性,以及基于这些实验结果讨论了遗忘因子的最佳选择。

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