Back to Search Start Over

Mobile Traffic Forecasting for Maximizing 5G Network resource Utilization

Authors :
Sciancalepore, Vincenzo
Samdanis, Konstantinos
Costa-Perez, Xavier
Bega, Dario
Gramaglia, Marco
Banchs, Albert|||0000-0003-3544-8537
Source :
IMDEA Networks Institute Digital Repository, IMDEA Networks Institute, instname
Publication Year :
2017

Abstract

The emerging network slicing paradigm for 5G provides new business opportunities by enabling multi-tenancy support. At the same time, new technical challenges are introduced, as novel resource allocation algorithms are required to accommodate different business models. In particular, infrastructure providers need to implement radically new admission control policies to decide on network slices requests depending on their Service Level Agreements (SLA). When implementing such admission control policies, infrastructure providers may apply forecasting techniques in order to adjust the allocated slice resources so as to optimize the network utilization while meeting network slices’ SLAs. This paper focuses on the design of three key network slicing building blocks responsible for (i) traffic analysis and prediction per network slice, (ii) admission control decisions for network slice requests, and (iii) adaptive correction of the forecasted load based on measured deviations. Our results show very substantial potential gains in terms of system utilization as well as a trade-off between conservative forecasting configurations versus more aggressive ones (higher gains, SLA risk). TRUE pub

Details

Language :
English
Database :
OpenAIRE
Journal :
IMDEA Networks Institute Digital Repository, IMDEA Networks Institute, instname
Accession number :
edsair.dedup.wf.001..0197f293b22fdd17028e6ec63c15f0f7