|国家预印本平台
首页|Data Matters: The Case of Predicting Mobile Cellular Traffic

Data Matters: The Case of Predicting Mobile Cellular Traffic

Data Matters: The Case of Predicting Mobile Cellular Traffic

来源:Arxiv_logoArxiv
英文摘要

Accurate predictions of base stations' traffic load are essential to mobile cellular operators and their users as they support the efficient use of network resources and allow delivery of services that sustain smart cities and roads. Traditionally, cellular network time-series have been considered for this prediction task. More recently, exogenous factors such as points of interest and other environmental knowledge have been explored too. In contrast to incorporating external factors, we propose to learn the processes underlying cellular load generation by employing population dynamics data. In this study, we focus on smart roads and use road traffic measures to improve prediction accuracy. Comprehensive experiments demonstrate that by employing road flow and speed, in addition to cellular network metrics, base station load prediction errors can be substantially reduced, by as much as $56.5\%.$ The code, visualizations and extensive results are available on https://github.com/nvassileva/DataMatters.

Natalia Vesselinova、Matti Harjula、Pauliina Ilmonen

10.1109/VNC64509.2025.11054248

通信无线通信交通运输经济综合运输电子技术应用

Natalia Vesselinova,Matti Harjula,Pauliina Ilmonen.Data Matters: The Case of Predicting Mobile Cellular Traffic[EB/OL].(2025-07-07)[2025-07-16].https://arxiv.org/abs/2411.02418.点此复制

评论