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Intra-RAN Online Distributed Reinforcement Learning For Uplink Power Control in 5G Cellular Networks

2022 IEEE 95th Vehicular Technology Conference: (VTC2022-Spring)(2022)

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摘要
Uplink power control plays a significant role in maintaining a good signal quality at the serving cell while minimizing interference to neighboring cells, thus maximizing the system performance. Traditionally, a single value open-loop power control (OLPC) parameter, P-0, is configured for all the user equipments (UEs) in a cell, and often same setting is used for similar cells. Recent studies have demonstrated that optimal P-0 depends on many factors, which yields a complex multi-dimensional optimization problem and there are no efficient approaches known to solve it under practical system-level settings. In this paper, we propose a solution based on reinforcement learning (RL) where each BS autonomously adjusts its P-0 setting to maximize its throughput performance. As compared to conventional sub-optimal approach, our solution encompasses a smart clustering of UEs, where each cluster specifies its own P-0. The proposed solution is evaluated by extensive system level simulations, where our results demonstrate a potential performance enhancement as compared to the baseline proposals.
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关键词
Reinforcement learning,power control,radio resource management
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