Decentralized Reinforcement Learning Control of a Robotic Manipulator
Reference
L. Buşoniu,
B. De Schutter, and
R. Babuška,
"Decentralized Reinforcement Learning Control of a Robotic
Manipulator," Proceedings of the 9th International
Conference on Control, Automation, Robotics and Vision (ICARCV
2006), Singapore, pp. 1347-1352, Dec. 2006.
Abstract
Multi-agent systems are rapidly finding applications in a variety of
domains, including robotics, distributed control, telecommunications,
etc. Learning approaches to multi-agent control, many of them based on
reinforcement learning (RL), are investigated in complex domains such
as teams of mobile robots. However, the application of decentralized
RL to low-level control tasks is not as intensively studied. In this
paper, we investigate centralized and decentralized RL, emphasizing
the challenges and potential advantages of the latter. These are then
illustrated on an example: learning to control a two-link rigid
manipulator. Some open issues and future research directions in
decentralized RL are outlined.
Downloads
- Corresponding technical report:
pdf
file
(314 KB)
Bibtex entry
@inproceedings{BusDeS:06-026,
author={L. Bu{\c{s}}oniu and B. {D}e Schutter and R. Babu{\v{s}}ka},
title={Decentralized Reinforcement Learning Control of a Robotic
Manipulator},
booktitle={Proceedings of the 9th International Conference on Control,
Automation, Robotics and Vision (ICARCV 2006)},
address={Singapore},
pages={1347--1352},
month=dec,
year={2006}
}
This page is maintained by Bart De Schutter.
Last update: February 21, 2026.