@inproceedings{bec3f38c7a5045ffa3a4304edf02e271,
title = "Experimental demonstration of multi-agent learning and planning under uncertainty for persistent missions with automated battery management",
abstract = "This paper presents algorithms and ight test results for multi-agent cooperative planning problems in presence of state-correlated uncertainty.An online learning and planning framework is used to address the problem of improving planner performance for missions with state-dependent uncertain agent health dynamics. The framework includes a previously introduced Decentralized Multi-agent Markov decision process (Dec-MMDP) as an online planning algorithm that is scalable in number of agents, and Incremental Feature Discovery (iFDD) which is a compact and fast learning algorithm for estimating parameters of a state-correlated uncertainty model. In combination, this architecture yield an integrated learning-planning algorithm where the planning performance improves as uncertainty is reduced through learning. The presented algorithms are validated in a persistent search and track scenario with a novel automated battery swapping/recharging system that enables the UAVs to collaboratively track targets over durations that are significantly larger than individual vehicle endurance with a single battery. The results indicate that the architecture can be used as an computationally effcient solution to multi-agent uncertain cooperative planning problems.",
author = "Ure, {N. Kemal} and Tuna Toksoz and Girish Chowdhary and Joshua Redding and How, {Jonathan P.} and Vavrina, {Matthew A.} and John Vian",
year = "2012",
doi = "10.2514/6.2012-4622",
language = "English",
isbn = "9781600869389",
series = "AIAA Guidance, Navigation, and Control Conference 2012",
publisher = "American Institute of Aeronautics and Astronautics Inc.",
booktitle = "AIAA Guidance, Navigation, and Control Conference 2012",
note = "AIAA Guidance, Navigation, and Control Conference 2012 ; Conference date: 13-08-2012 Through 16-08-2012",
}