User Association and Load Balancing for Massive MIMO through Deep Learning

12/17/2018
by   Alessio Zappone, et al.
0

This work investigates the use of deep learning to perform user cell association for sum-rate maximization in Massive MIMO networks. It is shown how a deep neural network can be trained to approach the optimal association rule with a much more limited computational complexity, thus enabling to update the association rule in real-time, on the basis of the mobility patterns of users. In particular, the proposed neural network design requires as input only the users' geographical positions. Numerical results show that it guarantees the same performance of traditional optimization-oriented methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/29/2019

Uplink power control in cell-free massive MIMO via deep learning

This paper focuses on the use of a deep learning approach to perform sum...
research
12/10/2018

Deep Learning Power Allocation in Massive MIMO

This work advocates the use of deep learning to perform max-min and max-...
research
05/03/2018

Computational Optimal Transport for 5G Massive C-RAN Device Association

The massive scale of future wireless networks will create computational ...
research
07/04/2022

User Association in User-Centric Hybrid VLC/RF Cell-Free Massive MIMO Systems

A continuous goal in all communication systems is to enhance the users e...
research
12/02/2020

Pareto Deterministic Policy Gradients and Its Application in 5G Massive MIMO Networks

In this paper, we consider jointly optimizing cell load balance and netw...
research
06/04/2021

Transferable and Distributed User Association Policies for 5G and Beyond Networks

We study the problem of user association, namely finding the optimal ass...
research
02/04/2018

Small Cell Association with Networked Flying Platforms: Novel Algorithms and Performance Bounds

Fifth generation (5G) and beyond-5G (B5G) systems expect coverage and ca...

Please sign up or login with your details

Forgot password? Click here to reset