Automated Continuous Force-Torque Sensor Bias Estimation (2403.01068v1)
Abstract: Six axis force-torque sensors are commonly attached to the wrist of serial robots to measure the external forces and torques acting on the robot's end-effector. These measurements are used for load identification, contact detection, and human-robot interaction amongst other applications. Typically, the measurements obtained from the force-torque sensor are more accurate than estimates computed from joint torque readings, as the former is independent of the robot's dynamic and kinematic models. However, the force-torque sensor measurements are affected by a bias that drifts over time, caused by the compounding effects of temperature changes, mechanical stresses, and other factors. In this work, we present a pipeline that continuously estimates the bias and the drift of the bias of a force-torque sensor attached to the wrist of a robot. The first component of the pipeline is a Kalman filter that estimates the kinematic state (position, velocity, and acceleration) of the robot's joints. The second component is a kinematic model that maps the joint-space kinematics to the task-space kinematics of the force-torque sensor. Finally, the third component is a Kalman filter that estimates the bias and the drift of the bias of the force-torque sensor assuming that the inertial parameters of the gripper attached to the distal end of the force-torque sensor are known with certainty.
- Timothy D Barfoot. State estimation for robotics. Cambridge University Press, 2024.
- Manipulator differential kinematics: Part 2: Acceleration and advanced applications. IEEE Robotics & Automation Magazine, pages 2–12, 2023.
- 12d force and acceleration sensing: A helpful experience report on sensor characteristics. In 2008 IEEE International Conference on Robotics and Automation, pages 3455–3462. IEEE, 2008.
- On-line rigid object recognition and pose estimation based on inertial parameters. In 2007 IEEE/RSJ International Conference on Intelligent Robots and Systems, pages 1402–1408. IEEE, 2007.