Multi-Agent Deep Reinforcement Learning For Distributed Resource Management In Wirelessly Powered Communication Networks

IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY(2020)

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摘要
This paper studies multi-agent deep reinforcement learning (MADRL) based resource allocation methods for multi-cell wireless powered communication networks (WPCNs) where multiple hybrid access points (H-APs) wirelessly charge energy-limited users to collect data from them. We design a distributed reinforcement learning strategy where H-APs individually determine time and power allocation variables. Unlike traditional centralized optimization algorithms which require global information collected at a central unit, the proposed MADRL technique models an H-AP as an agent producing its action based only on its own locally observable states. Numerical results verify that the proposed approach can achieve comparable performance of the centralized algorithms.
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关键词
Resource management, Interference, Optimization, Uplink, Wireless communication, Downlink, Wireless sensor networks, Wireless powered communication networks, multi-agent deep reinforcement learning, actor-critic method
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