The dynamic uncertainties and disturbances characterizing continuum soft robots call for the derivation of simple and possibly information-free controllers. We propose an iterative learning control law for shape regulation of continuum soft robots consisting of a PD action and a feedforward term, updated to learn the potential forces at the target configuration. We prove that the regulator achieves global asymptotic stabilization of the closed-loop system to the desired set-point. Simulation results validate the proposed control law.
Regulation by Iterative Learning in Continuum Soft Robots / Montagna, Marco; Pustina, Pietro; DE LUCA, Alessandro. - (2022), pp. 151-152. (Intervento presentato al convegno 4th Italian Conference on Robotics and Intelligent Machines tenutosi a Roma, Italy) [10.5281/zenodo.7531330].
Regulation by Iterative Learning in Continuum Soft Robots
Marco Montagna
;Pietro Pustina
;Alessandro De Luca
2022
Abstract
The dynamic uncertainties and disturbances characterizing continuum soft robots call for the derivation of simple and possibly information-free controllers. We propose an iterative learning control law for shape regulation of continuum soft robots consisting of a PD action and a feedforward term, updated to learn the potential forces at the target configuration. We prove that the regulator achieves global asymptotic stabilization of the closed-loop system to the desired set-point. Simulation results validate the proposed control law.File | Dimensione | Formato | |
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