Enhanced Max-Min Rate of Users in UAV-Assisted Emergency Networks Using Reinforcement Learning

IEEE Networking Letters(2022)

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摘要
Unmanned aerial vehicles (UAVs) as an Aerial Base Station (ABS) are the enabler in the provisioning of emergency communication services. However, ABS unplanned deployment creates interference from the neighboring co-channel base station, which hinders meeting the required quality-of-service (QoS) requirements and the minimum rate of users. Hence, the ABS deployment and its power allocation require a machine learning-based solution xthat can plan in real-time to enhance the users’ max-min sum-rate . We propose the reinforcement learning-based $\epsilon $ greedy algorithm to solve the max-min optimization problem. The simulation results validate the proposal by achieving around 2.3 bps/Hz high minimum sum-rate compared to the conventional water filling algorithm at the same ABS altitude.
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关键词
Aerial base stations placement,reinforcement learning,max-min sum-rate
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