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Muti-agent deep reinforcement learning
KAUST researchers propose a distributed coordination framework for heterogeneous non-terrestrial networks
2 min read ·
Wed, Nov 12 2025
Press Releases
NTN Communication
Muti-agent deep reinforcement learning
UAV communications
HAPSs
First analyzed the unique characteristics of non-terrestrial networks (NTN) platforms with impact on network specification, and proposed an efficient distributed coordination framework for heterogeneous NTN, verified by a case study on IAB-enabled heterogeneous UAV networks.