2022
DOI: 10.48550/arxiv.2205.03321
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Learning Scalable Policies over Graphs for Multi-Robot Task Allocation using Capsule Attention Networks

Abstract: This paper presents a novel graph reinforcement learning (RL) architecture to solve multi-robot task allocation (MRTA) problems that involve tasks with deadlines and workload, and robot constraints such as work capacity. While drawing motivation from recent graph learning methods that learn to solve combinatorial optimization (CO) problems such as multi-Traveling Salesman and Vehicle Routing Problems using RL, this paper seeks to provide better performance (compared to non-learning methods) and important scala… Show more

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