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Distributed Reinforcement Learning for Cooperative Multi-Robot Object Manipulation

Book Contribution - Book Chapter Conference Contribution

We consider solving a cooperative multi-robot object manipulation task using reinforcement learning (RL). We propose two distributed multi-agent RL approaches: distributed approximate RL (DA-RL), where each agent applies Q-learning with individual reward functions; and game-theoretic RL (GT-RL), where the agents update their Q-values based on the Nash equilibrium of a bimatrix Q-value game. We validate the proposed approaches in the setting of cooperative object manipulation with two simulated robot arms. Although we focus on a small system of two agents in this paper, both DA-RL and GT-RL apply to general multi-agent systems, and are expected to scale well to large systems.
Book: International Conference on Autonomous Agents and Multi-Agent Systems
Series: Proceedings of the International Joint Conference on Autonomous Agents and Multiagent Systems, AAMAS
Pages: 1831-1833
Number of pages: 3
Publication year:2020
  • Scopus Id: 85096686982