Research on multi-robot systems has demonstrated promising results in manifold applications and domains. Still, efficiently learning an effective robot behaviors is very difficult, due to unstructured scenarios, high uncertainties, and large state dimensionality (e.g. hyper-redundant and groups of robot). To alleviate this problem, we present Q-CP a cooperative model-based reinforcement learning algorithm, which exploits action values to both (1) guide the exploration of the state space and (2) generate effective policies. Specifically, we exploit Q-learning to attack the curse-of-dimensionality in the iterations of a Monte-Carlo Tree Search. We implement and evaluate Q-CP on different stochastic cooperative (general-sum) games: (1) a simple cooperative navigation problem among 3 robots, (2) a cooperation scenario between a pair of KUKA YouBots performing hand-overs, and (3) a coordination task between two mobile robots entering a door. The obtained results show the effectiveness of Q-CP in the chosen applications, where action values drive the exploration and reduce the computational demand of the planning process while achieving good performance.
Dettaglio pubblicazione
2018, 2018 IEEE International Conference on Robotics and Automation (ICRA), Pages 6469-6475
Q-CP: Learning Action Values for Cooperative Planning (04b Atto di convegno in volume)
Riccio Francesco, Capobianco Roberto, Nardi Daniele
ISBN: 978-1-5386-3081-5
Gruppo di ricerca: Artificial Intelligence and Robotics
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