Title :
Computed torque control with variable gains through Gaussian process regression
Author :
Alberto, Nicolas Torres ; Mistry, Michael ; Stulp, Freek
Author_Institution :
Robot. & Comput. Vision, ENSTA-ParisTech, Paris, France
Abstract :
In computed torque control, robot dynamics are predicted by dynamic models. This enables more compliant control, as the gains of the feedback term can be lowered, because the task of compensating for robot dynamics is delegated from the feedback to the feedforward term. Previous work has shown that Gaussian process regression is an effective method for learning computed torque control, by setting the feedforward torques to the mean of the Gaussian process. We extend this work by also exploiting the variance predicted by the Gaussian process, by lowering the gains if the variance is low. This enables an automatic adaptation of the gains to the uncertainty in the computed torque model, and leads to more compliant low-gain control as the robot learns more accurate models over time. On a simulated 7-DOF robot manipulator, we demonstrate how accurate tracking is achieved, despite the gains being lowered over time.
Keywords :
Gaussian processes; compliance control; feedback; feedforward; gain control; manipulator dynamics; regression analysis; torque control; 7-DOF robot manipulator; Gaussian process regression; compliant control; compliant low-gain control; computed torque control; dynamic models; feedback term; feedforward term; feedforward torques; robot dynamics; variable gains; Computational modeling; Gaussian processes; Ground penetrating radar; Joints; Robots; Torque; Trajectory;
Conference_Titel :
Humanoid Robots (Humanoids), 2014 14th IEEE-RAS International Conference on
Conference_Location :
Madrid
DOI :
10.1109/HUMANOIDS.2014.7041362