Home /Research /Continuous critic learning for robot control in physical human-robot interaction
HRI

Continuous critic learning for robot control in physical human-robot interaction

Chen Wang, Yanan Li, Shuzhi Sam Ge, Keng Peng Tee, Tong Heng Lee

Year
2013
Citations
13

Abstract

In this paper, optimal impedance adaptation is investigated for interaction control in constrained motion. The external environment is modeled as a linear system with parameter matrices completely unknown and continuous critic learning is adopted for interaction control. The desired impedance is obtained which leads to an optimal realization of the trajectory tracking and force regulation. As no particular system information is required in the whole process, the proposed interaction control provides a feasible solution to a large number of applications. The validity of the proposed method is verified through simulation studies.

Keywords

Impedance controlControl theory (sociology)Realization (probability)TrajectoryRobotComputer scienceProcess (computing)Adaptation (eye)Control engineeringTracking (education)

Related papers

Browse all HRI papers