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Learning Policies for Dynamic Coalition Formation in Multi-Robot Task Allocation

Lucas C. D. Bezerra, Ataíde Mateus Gualberto dos Santos, Shinkyu Park

发表年份
2025
引用次数
5

摘要

We propose a decentralized, learning-based framework for dynamic coalition formation in Multi-Robot Task Allocation (MRTA). Our approach extends MAPPO by integrating spatial action maps, robot motion planning, intention sharing, and task allocation revision to enable effective and adaptive coalition formation. Extensive simulation studies confirm the effectiveness of our model, enabling each robot to rely solely on local information to learn timely revisions of task selections and form coalitions with other robots to complete collaborative tasks. The results also highlight the proposed framework's ability to handle large robot populations and adapt to scenarios with diverse task sets.

关键词

Task (project management)Computer sciencePolicy learningRobotHuman–computer interactionArtificial intelligenceEconomicsMachine learningManagement

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