The dramatic growth in cellular traffic volume requires cellular network operators to develop strategies to carefully dimension and manage the available network resources. Forecasting traffic volumes is a fundamental building block for any proactive management strategy and is therefore of great interest in such a context. Differently from what found in the literature, where network traffic is generally predicted in the short-term, in this work we tackle the problem of forecasting busy hour traffic, i.e., the time series of observed daily maxima traffic volumes. We tackle specifically forecasting in the long term (one, two months ahead) and we compare different approaches for the task at hand, considering different forecasting algorithms as well as relying or not on a cluster-based approach which first groups network cells with similar busy hour traffic profiles and then fits per-cluster forecasting models to predict the traffic loads. Results on a real cellular network dataset show that busy hour traffic can be forecasted with errors below 10% for look-ahead periods up to 2 months in the future. Moreover, when clusters are available, we improve forecasting accuracy up to 8% and 5% for look-ahead of 1 and 2 months, respectively.

(2022). Forecasting Busy-Hour Downlink Traffic in Cellular Networks . Retrieved from https://hdl.handle.net/10446/263898

Forecasting Busy-Hour Downlink Traffic in Cellular Networks

Pimpinella, Andrea;
2022-01-16

Abstract

The dramatic growth in cellular traffic volume requires cellular network operators to develop strategies to carefully dimension and manage the available network resources. Forecasting traffic volumes is a fundamental building block for any proactive management strategy and is therefore of great interest in such a context. Differently from what found in the literature, where network traffic is generally predicted in the short-term, in this work we tackle the problem of forecasting busy hour traffic, i.e., the time series of observed daily maxima traffic volumes. We tackle specifically forecasting in the long term (one, two months ahead) and we compare different approaches for the task at hand, considering different forecasting algorithms as well as relying or not on a cluster-based approach which first groups network cells with similar busy hour traffic profiles and then fits per-cluster forecasting models to predict the traffic loads. Results on a real cellular network dataset show that busy hour traffic can be forecasted with errors below 10% for look-ahead periods up to 2 months in the future. Moreover, when clusters are available, we improve forecasting accuracy up to 8% and 5% for look-ahead of 1 and 2 months, respectively.
16-gen-2022
Inglese
IEEE International Conference on Communications
978-1-5386-8347-7
2022-
4336
4341
online
United States
Piscataway
IEEE (Institute of Electrical and Electronics Engineers)
ICC 2022, IEEE International Conference on Communications, Seoul, South Korea, 16-20 may 2022
Seoul (South Korea)
16-20 may 2022
internazionale
contributo
Settore ING-INF/03 - Telecomunicazioni
Clustering; Mobile Data Analysis; Traffic Forecasting; Traffic Peak Detection;
info:eu-repo/semantics/conferenceObject
5
Pimpinella, Andrea; Di Giusto, Federico; Redondi, Alessandro; Venturini, Luisa; Pavon, Andrea
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2022). Forecasting Busy-Hour Downlink Traffic in Cellular Networks . Retrieved from https://hdl.handle.net/10446/263898
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/263898
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