A Survey of Machine Learning Applications to Handover Management in 5G and Beyond
View/ Open
Date
2021-03-14Author
Mollel, Michael
Abubakar, Attai
Ozturk, Metin
Kaijage, Shubi
Kisangiri, Michael
Imran, Muhammad
Abbasi, Qammer
Metadata
Show full item recordAbstract
Handover (HO) is one of the key aspects of next-generation (NG) cellular communication
networks that need to be properly managed since it poses multiple threats to quality-of-service (QoS) such
as the reduction in the average throughput as well as service interruptions. With the introduction of new
enablers for fifth-generation (5G) networks, such as millimetre wave (mm-wave) communications, network
densification, Internet of things (IoT), etc., HO management is provisioned to be more challenging as the
number of base stations (BSs) per unit area, and the number of connections has been dramatically rising.
Considering the stringent requirements that have been newly released in the standards of 5G networks,
the level of the challenge is multiplied. To this end, intelligent HO management schemes have been proposed
and tested in the literature, paving the way for tackling these challenges more efficiently and effectively. In
this survey, we aim at revealing the current status of cellular networks and discussing mobility and HO
management in 5G alongside the general characteristics of 5G networks. We provide an extensive tutorial
on HO management in 5G networks accompanied by a discussion on machine learning (ML) applications to
HO management. A novel taxonomy in terms of the source of data to be utilized in training ML algorithms
is produced, where two broad categories are considered; namely, visual data and network data. The state-of-
the-art on ML-aided HO management in cellular networks under each category is extensively reviewed with
the most recent studies, and the challenges, as well as future research directions, are detailed