학술논문

An Adaptive Imitation Learning Framework for Robotic Complex Contact-Rich Insertion Tasks
Document Type
article
Source
Frontiers in Robotics and AI, Vol 8 (2022)
Subject
compliance control
imitation learning
reinforcement learning
robotic assembly
robot autonomy
Mechanical engineering and machinery
TJ1-1570
Electronic computers. Computer science
QA75.5-76.95
Language
English
ISSN
2296-9144
Abstract
Complex contact-rich insertion is a ubiquitous robotic manipulation skill and usually involves nonlinear and low-clearance insertion trajectories as well as varying force requirements. A hybrid trajectory and force learning framework can be utilized to generate high-quality trajectories by imitation learning and find suitable force control policies efficiently by reinforcement learning. However, with the mentioned approach, many human demonstrations are necessary to learn several tasks even when those tasks require topologically similar trajectories. Therefore, to reduce human repetitive teaching efforts for new tasks, we present an adaptive imitation framework for robot manipulation. The main contribution of this work is the development of a framework that introduces dynamic movement primitives into a hybrid trajectory and force learning framework to learn a specific class of complex contact-rich insertion tasks based on the trajectory profile of a single task instance belonging to the task class. Through experimental evaluations, we validate that the proposed framework is sample efficient, safer, and generalizes better at learning complex contact-rich insertion tasks on both simulation environments and on real hardware.