Publication Details
- Keywords:
- UAV
- collaborative robotics
- task allocation
- search and rescue
Abstract
This paper proposes a distributed Multi-Agent Reinforcement Learning (MARL) algorithm for a team of Unmanned Aerial Vehicles (UAVs). The proposed MARL algorithm allows UAVs to learn cooperatively to provide a full coverage of an unknown field of interest while minimizing the overlapping sections among their field of views. Two challenges in MARL for such a system are discussed in the paper: firstly, the complex dynamic of the joint-actions of the UAV team, that will be solved using game-theoretic correlated equilibrium, and secondly, the challenge in huge dimensional state space representation will be tackled with efficient function approximation techniques. We also provide our experimental results in detail with both simulation and physical implementation to show that the UAV team can successfully learn to accomplish the task.
Author Details
Name: | Huy Pham |
Status: | Inactive |
Name: | Hung La |
Status: | Active |
Name: | David Feil-Seifer | |
email: | dave@cse.unr.edu | |
Website: | http://cse.unr.edu/~dave | |
Phone: | (775) 784-6469 | |
Status: | Active |
Name: | Ara Nefian |
Status: | Inactive |
BibTex Reference
title={Cooperative and distributed reinforcement learning of drones for field coverage},
author={Huy X. Pham and Hung La and David Feil-Seifer and Ara Nefian},
year={2018},
month={September},
publisher={arXiv:1803.07250},
}
HTML Reference
Support
Collaborative Control of Multiple UAVs for Wildfire Tracking and Monitoring, Nevada NASA Space Grant Consortium (NVSGC) PI: Hung La, co-PI: David Feil-Seifer, Amount: $30,000, July 1, 2017 - April 9, 2018