Archives of Control Sciences (Sep 2014)

Iterative learning control with sampled-data feedback for robot manipulators

  • Delchev Kamen,
  • Boiadjiev George,
  • Kawasaki Haruhisa,
  • Mouri Tetsuya

DOI
https://doi.org/10.2478/acsc-2014-0018
Journal volume & issue
Vol. 24, no. 3
pp. 299 – 319

Abstract

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This paper deals with the improvement of the stability of sampled-data (SD) feedback control for nonlinear multiple-input multiple-output time varying systems, such as robotic manipulators, by incorporating an off-line model based nonlinear iterative learning controller. The proposed scheme of nonlinear iterative learning control (NILC) with SD feedback is applicable to a large class of robots because the sampled-data feedback is required for model based feedback controllers, especially for robotic manipulators with complicated dynamics (6 or 7 DOF, or more), while the feedforward control from the off-line iterative learning controller should be assumed as a continuous one. The robustness and convergence of the proposed NILC law with SD feedback is proven, and the derived sufficient condition for convergence is the same as the condition for a NILC with a continuous feedback control input. With respect to the presented NILC algorithm applied to a virtual PUMA 560 robot, simulation results are presented in order to verify convergence and applicability of the proposed learning controller with SD feedback controller attached

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