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State Space Constrained Iterative Learning Control for Robotic Manipulators
Authors:Kaloyan Yovchev  Kamen Delchev  Evgeniy Krastev
Affiliation:1. Faculty of Mathematics and Informatics, Sofijski Universitet Sveti Kliment Okhridski, Bulgaria;2. Institute of mechanics – BAS, Bulgaria
Abstract:Real‐life work operations of industrial robotic manipulators are performed within a constrained state space. Such operations most often require accurate planning and tracking a desired trajectory, where all the characteristics of the dynamic model are taken into consideration. This paper presents a general method and an efficient computational procedure for path planning with respect to state space constraints. Given a dynamic model of a robotic manipulator, the proposed solution takes into consideration the influence of all imprecisely measured model parameters, making use of iterative learning control (ILC). A major advantage of this solution is that it resolves the well‐known problem of interrupting the learning procedure due to a high transient tracking error or when the desired trajectory is planned closely to the state space boundaries. The numerical procedure elaborated here computes the robot arm motion to accurately track a desired trajectory in a constrained state space taking into consideration all the dynamic characteristics that influence the motion. Simulation results with a typical industrial robot arm demonstrate the robustness of the numerical procedure. In particular, the results extend the applicability of ILC in robot motion control and provide a means for improving the overall trajectory tracking performance of most robotic systems.
Keywords:Iterative learning control  constrained state space  transient growth problem  robotic manipulator  computer simulation
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