Title
An improved approach of task-parameterized learning from demonstrations for cobots in dynamic manufacturing
Abstract
Task-Parameterized Learning from Demonstrations (TP-LfD) is an intelligent intuitive approach to support collaborative robots (cobots) for various industrial applications. Using TP-LfD, human’s demonstrated paths can be learnt by a cobot for reproducing new paths for the cobot to move along in dynamic situations intelligently. One of the challenges to applying TP-LfD in industrial scenarios is how to identify and optimize critical task parameters of TP-LfD, i.e., frames in demonstrations. To overcome the challenge and enhance the performance of TP-LfD in complex manufacturing applications, in this paper, an improved TP-LfD approach is presented. In the approach, frames in demonstrations are autonomously chosen from a pool of generic visual features. To strengthen computational convergence, a statistical algorithm and a reinforcement learning algorithm are designed to eliminate redundant frames and irrelevant frames respectively. Meanwhile, a B-Spline cut-in algorithm is integrated in the improved TP-LfD approach to enhance the path reproducing process in dynamic manufacturing situations. Case studies were conducted to validate the improved TP-LfD approach and to showcase the advantage of the approach. Owing to the robust and generic capabilities, the improved TP-LfD approach enables teaching a cobot to behavior in a more intuitive and intelligent means to support dynamic manufacturing applications.
Year
DOI
Venue
2022
10.1007/s10845-021-01743-w
Journal of Intelligent Manufacturing
Keywords
DocType
Volume
Learning from demonstration, Reinforcement learning, Collaborative robots
Journal
33
Issue
ISSN
Citations 
5
0956-5515
0
PageRank 
References 
Authors
0.34
14
4
Name
Order
Citations
PageRank
Shirine El Zaatari152.14
Yuqi Wang201.35
Yudie Hu300.34
Weidong Li413613.50