Distributed user-to-multiple access points association through deep learning for beyond 5G

Future wireless networks will be facing unprecedented difficulties arising from mobile traffic growth, network densification, as well as diversification of applications and services. Indeed, future user devices are expected to integrate diverse radio interfaces such as 5G, WBAN or IoT, enabling each...

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Veröffentlicht in:Computer networks (Amsterdam, Netherlands : 1999) Netherlands : 1999), 2021-10, Vol.197, p.108258, Article 108258
Hauptverfasser: Dinh, Thi Ha Ly, Kaneko, Megumi, Wakao, Keisuke, Kawamura, Kenichi, Moriyama, Takatsune, Abeysekera, Hirantha, Takatori, Yasushi
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container_start_page 108258
container_title Computer networks (Amsterdam, Netherlands : 1999)
container_volume 197
creator Dinh, Thi Ha Ly
Kaneko, Megumi
Wakao, Keisuke
Kawamura, Kenichi
Moriyama, Takatsune
Abeysekera, Hirantha
Takatori, Yasushi
description Future wireless networks will be facing unprecedented difficulties arising from mobile traffic growth, network densification, as well as diversification of applications and services. Indeed, future user devices are expected to integrate diverse radio interfaces such as 5G, WBAN or IoT, enabling each user to be served a wide range of applications at any time. This poses significant challenges in terms of wireless resource sharing and interference management, as more and more stringent Quality of Service (QoS) constraints should be jointly satisfied in dense interfering environments. Furthermore, future networks are expected to be highly autonomous and decentralized. To meet these challenges, this work proposes distributed user-to-multiple Access Points (AP) association methods, where the objective is to maximize the long-term sum-rate subject to application QoS constraints, as well as to AP load constraints. Our distributed methods enable each user to leverage their Deep Reinforcement Learning (DRL) capabilities, in particular Deep Q-Learning (DQL), to self-optimize their APs’ selection solely based on their local network state knowledge, so as to best satisfy their diverse requirements. Numerical results show that, compared to baseline schemes, the proposed methods enable global throughput enhancements while reducing user QoS outage probabilities, even in large and dense networks.
doi_str_mv 10.1016/j.comnet.2021.108258
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subjects 5G mobile communication
Deep learning
Deep Q-learning
Deep reinforcement learning
Densification
Machine learning
Multiple access
Quality of service
User association
User-to-multiple access points association
Wireless networks
title Distributed user-to-multiple access points association through deep learning for beyond 5G
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