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Hybrid autonomous control for heterogeneous multi-agent system -combining of centralized reinforcement learning and distributed rule-based control

K. Ito, Akio Gofuku

发表年份
2004
引用次数
5

摘要

Reinforcement learning is an adaptive and flexible control method for autonomous system. In our previous works, we had proposed a reinforcement learning algorithm for redundant systems: "Q-learning with dynamic structuring of exploration space based on GA (QDSEGA)", and applied it to multi-agent systems. However previous works of the QDSEGA have been restricted to homogeneous agents. In this paper, we extend our previous works of multi-agent systems, and propose a hybrid autonomous control method for heterogeneous multi-agent systems. To demonstrate the effectiveness of the proposed method, simulations of transportation task by 10 heterogeneous mobile robots have been carried out. As a result effective behaviors have been obtained.

关键词

Reinforcement learningComputer scienceMulti-agent systemDistributed computingControl (management)Mobile robotAutonomous agentHomogeneousTask (project management)Structuring

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