Feb. 6, 2024, 5:45 a.m. | Chang-Yong Lim Jihong Park Jinho Choi Ju-Hyung Lee Daesub Oh Heewook Kim

cs.LG updates on arXiv.org arxiv.org

In this article, we propose a multi-agent deep reinforcement learning (MADRL) framework to train a multiple access protocol for downlink low earth orbit (LEO) satellite networks. By improving the existing learned protocol, emergent random access channel (eRACH), our proposed method, coined centralized and compressed emergent signaling for eRACH (Ce2RACH), can mitigate inter-satellite interference by exchanging additional signaling messages jointly learned through the MADRL training process. Simulations demonstrate that Ce2RACH achieves up to 36.65% higher network throughput compared to eRACH, while …

agent article cs.lg cs.ni earth framework interference low low earth orbit multi-agent multiple networks protocol random reinforcement reinforcement learning satellite train

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