TY - JOUR
T1 - Characterizing throughput and convergence time in dynamic multi-connectivity 5G deployments
AU - Pirmagomedov, Rustam
AU - Moltchanov, Dmitri
AU - Samuylov, Andrey
AU - Orsino, Antonino
AU - Torsner, Johan
AU - Andreev, Sergey
AU - Koucheryavy, Yevgeni
N1 - Funding Information:
This work was supported in part by the Academy of Finland (Projects RADIANT and IDEA-MILL, recipient Sergey Andreev).
Funding Information:
The results of Sections 2 , 4 were obtained within Russian Scientific Foundation (RSF) grant (project No. 21-79-00142 , https://rscf.ru/en/project/21-79-00142/ , recipient Andrey Samuylov).
Publisher Copyright:
© 2022 The Author(s)
PY - 2022/4/1
Y1 - 2022/4/1
N2 - Fifth-generation (5G) mobile communications are expected to integrate multiple radio access technologies (RATs) within a unified access network by allowing the user equipment (UE) to utilize them concurrently. As a consequence, mobile users face even more heterogeneous connectivity options, which creates challenges for efficient decision-making when selecting a network dynamically. In this work, with the tools of queuing theory, integral geometry, and optimization theory, we develop a novel mobility-centric analytical methodology for multi-RAT deployments. Particularly, we first contribute a framework for optimal data rate allocation in the network-assisted regime. Then, we characterize the convergence time of the distributed optimization algorithms based on reinforcement learning to reduce the signaling overheads. Our findings suggest that network-assisted strategies may improve the UE throughput by up to 60% depending on the considered deployment, where the gains increase with a higher density of millimeter-wave New Radio (NR) base stations. A user-centric solution based on reinforcement learning mechanisms is capable of approaching the performance of the network-assisted scheme. However, the associated convergence time may be prohibitive, on the order of several minutes. To improve the latter, we further propose and evaluate a transfer learning-based algorithm that allows to decrease the convergence time by up to 10 times, thus becoming a simple solution for rate-optimized operation in future 5G NR deployments.
AB - Fifth-generation (5G) mobile communications are expected to integrate multiple radio access technologies (RATs) within a unified access network by allowing the user equipment (UE) to utilize them concurrently. As a consequence, mobile users face even more heterogeneous connectivity options, which creates challenges for efficient decision-making when selecting a network dynamically. In this work, with the tools of queuing theory, integral geometry, and optimization theory, we develop a novel mobility-centric analytical methodology for multi-RAT deployments. Particularly, we first contribute a framework for optimal data rate allocation in the network-assisted regime. Then, we characterize the convergence time of the distributed optimization algorithms based on reinforcement learning to reduce the signaling overheads. Our findings suggest that network-assisted strategies may improve the UE throughput by up to 60% depending on the considered deployment, where the gains increase with a higher density of millimeter-wave New Radio (NR) base stations. A user-centric solution based on reinforcement learning mechanisms is capable of approaching the performance of the network-assisted scheme. However, the associated convergence time may be prohibitive, on the order of several minutes. To improve the latter, we further propose and evaluate a transfer learning-based algorithm that allows to decrease the convergence time by up to 10 times, thus becoming a simple solution for rate-optimized operation in future 5G NR deployments.
KW - 5G
KW - Mobile network
KW - Multi-RAT
KW - Reinforcement learning
U2 - 10.1016/j.comcom.2022.01.015
DO - 10.1016/j.comcom.2022.01.015
M3 - Article
AN - SCOPUS:85124599114
SN - 0140-3664
VL - 187
SP - 45
EP - 58
JO - Computer Communications
JF - Computer Communications
ER -