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Learning Behaviours for Decentralised Multi-Robot Collision Avoidance in Constrained Pathways Using Curriculum Reinforcement Learning

PUBLICATION DATE: 6 June, 2025
PUBLICATION AUTHOR/S: Md Mostafizur Rahman Komol; Brendan Tidd; Will Browne; Frederic Maire; Jason Williams; David Howard

Mobile robot teams often require decentralised autonomous navigation through narrow gaps in limited communication environments (e.g., underground search-and-rescue operations). Existing navigation approaches exhibit suboptimal performance for avoiding multi-robot collisions in such bottlenecks due to an inability to address the dynamic nature of the robots. Initial work utilising reinforcement learning has demonstrated success in navigating a single robot through narrow gaps. However, when training agents to produce give-way behaviour for navigating through constrained gaps, end-to-end reinforcement learning using simple rewards suffers from slow convergence due to the increased search space of viable policies. This paper introduces a novel curriculum reinforcement learning framework, incorporating a multi-robot bootstrap curriculum with preprogrammed behaviour to guide initial policy formation, subsequently refined by a gap curriculum that progressively reduces training complexity towards an optimal policy. This framework learns multi-robot interaction behaviours, which are impractical to program manually. Our model achieves a 99% success-rate in give-way behaviour generation without inter-agent communications in high-fidelity simulations. The success-rate reduced to 73% in simulations incorporating noisy sensors, and 60% in field-robot tests, substantiating our model’s practical viability despite sensor noise and real-world uncertainties. The simple benchmark methods lack efficiency with basic interaction behaviours.

RELATED PROGRAM/S:
Biomimic Cobots


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