Abstract

Network dimensioning is a critical task in current mobile networks, as any failure in this process leads to degraded user experience or unnecessary upgrades of network resources. For this purpose, radio planning tools often predict monthly busy-hour data traffic to detect capacity bottlenecks in advance. Supervised Learning (SL) arises as a promising solution to improve predictions obtained with legacy approaches. Previous works have shown that deep learning outperforms classical time series analysis when predicting data traffic in cellular networks in the short term (seconds/minutes) and medium term (hours/days) from long historical data series. However, long-term forecasting (several months horizon) performed in radio planning tools relies on short and noisy time series, thus requiring a separate analysis. In this work, we present the first study comparing SL and time series analysis approaches to predict monthly busy-hour data traffic on a cell basis in a live LTE network. To this end, an extensive dataset is collected, comprising data traffic per cell for a whole country during 30 months. The considered methods include Random Forest, different Neural Networks, Support Vector Regression, Seasonal Auto Regressive Integrated Moving Average and Additive Holt–Winters. Results show that SL models outperform time series approaches, while reducing data storage capacity requirements. More importantly, unlike in short-term and medium-term traffic forecasting, non-deep SL approaches are competitive with deep learning while being more computationally efficient.

Highlights

  • In future 5G networks, it is expected that the rapid traffic growth and the coexistence of services with very different requirements will lead to constantly changing traffic patterns and network capacity requirements [1,2]

  • Such a behavior may be due to the reduced number of historical data samples in the considered time series, which prevents the model from eliminating noise effect, causing a significant error when estimating future traffic

  • Accurate long-term traffic forecasting will be crucial for networkdimensioning in 5G networks

Read more

Summary

Introduction

In future 5G networks, it is expected that the rapid traffic growth and the coexistence of services with very different requirements will lead to constantly changing traffic patterns and network capacity requirements [1,2]. Imminent problems detected with short-term forecasts often trigger temporary changes of network parameters (e.g., a more efficient voice coding scheme [5], new handover margin settings for traffic sharing between adjacent cells [6] or naïve packet schedulers for a lower computational load [7]). A comprehensive analysis is carried out to compare the performance of SL against time series analysis schemes for predicting monthly busy-hour data traffic per cell in the long term. For this purpose, a large dataset is collected during 30 months from a live Long Term Evolution (LTE) network covering an entire country.

Related Work
Problem Formulation
Dataset
Traffic Forecasting Methods
Time horizon
Model Construction
Experiment 3—Creation of Specific Models for High-Traffic Cells
Experiment 2
Experiment 3
Computational Complexity
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call