Learning Multi-Agent Coordination for Replenishment at Sea
May 15, 2024·,,,
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Byeolyi Han
Minwoo Cho
Letian Chen
Rohan Paleja
Zixuan Wu
Sean Ye
Esmaeil Seraj
David Sidoti
Matthew Gombolay
Abstract
Optimizing large-scale logistics is computationally challenging due to its scale and requirement to be robust to stochastic and time-varying weather disturbances. However, prior research in multi-agent reinforcement learning (MARL) does not address scenarios that capture complexity of logistics operations influenced by dynamic weather patterns. To address this gap, we suggest a new MARL environment, that has two types of agents equipped with limited resources and integrates real wave data to model the influences of weather on the replenishment at sea (RAS) operation. To this end, we propose SchedHGNN, a novel MARL algorithm that incorporates a heterogeneous graph neural network and an intrinsic reward scheme to enhance agent coordination and mitigate challenges induced by environment non-stationarity. Our results show that the combination of effective RAS scheduling and improved …
Type
Publication
IEEE Robotics and Automation Letters