Towards Learning Force Sensing for a Concentric Tube Continuum Robot

TitleTowards Learning Force Sensing for a Concentric Tube Continuum Robot
Publication TypeWorkshop Paper
Year of Publication2019
AuthorsDonat H, Lilge S, Steil JJ, Burgner-Kahrs J
Date Published05.2019
Place PublishedOpen Challenges and State-of-the-Art in Control System Design and Technology Development for Surgical Robotic Systems
Abstract

This paper presents a novel data-driven approach for sensing forces for Concentric Tube Continuum Robots. By exploiting their inherent flexibility, the deflection of the robot is used to estimate external forces. This work is based on the usage of a Direct Cascade Architecture of Extreme Learning Machines with Ridge-Regression to estimate the tip contact forces applied to a 6-DoF Concentric Tube Continuum Robots. The introduced incremental learning method achieves a Root-mean-square error of 0.08 N for the whole workspace of the robot with external force magnitudes of less than 0.5 N and an error of 0.0038 N with minor restrictions to the tube rotations with applied force magnitudes of less than 0.1 N.

URLhttps://sites.google.com/ualberta.ca/2019-icra-workshop