In this research, we propose automating network management through data-driven intelligence, with a particular focus on anomalies and network traffic during specific events or periods. We analyze a large dataset collected by Orange mobile network operator in France with the goal of forecasting mobile demand for different classes of services. To model the underlying network infrastructure, we introduce a model for the underlying network based on a hierarchy of virtualization layers and slices. Building on this model, we propose algorithms to optimize the resources allocated to network slices and traffic distribution within the operator’s network. Network performance is evaluated as the fraction of time the mobile traffic is within the capacity of the network. Our results demonstrate that dynamic reallocation of resources among slices, and dynamic load balancing (traffic shaping) between nodes notably improves network performance. These results provide insights into critical aspects related to future 5G network management.

Pietri, M., Hadjidimitriou, N., Mamei, M., Picone, M., Rossini, E., Sanna, E. M., Adzic, J., Buldorini, A., Traffic analysis and resource adaptation in large-scale 5G multi-layer edge networks, <<PERVASIVE AND MOBILE COMPUTING>>, 2026; (116): N/A-N/A. [doi:https://doi.org/10.1016/j.pmcj.2025.102158] [https://hdl.handle.net/10807/339224]

Traffic analysis and resource adaptation in large-scale 5G multi-layer edge networks

Hadjidimitriou, Natalia
Secondo
;
2026

Abstract

In this research, we propose automating network management through data-driven intelligence, with a particular focus on anomalies and network traffic during specific events or periods. We analyze a large dataset collected by Orange mobile network operator in France with the goal of forecasting mobile demand for different classes of services. To model the underlying network infrastructure, we introduce a model for the underlying network based on a hierarchy of virtualization layers and slices. Building on this model, we propose algorithms to optimize the resources allocated to network slices and traffic distribution within the operator’s network. Network performance is evaluated as the fraction of time the mobile traffic is within the capacity of the network. Our results demonstrate that dynamic reallocation of resources among slices, and dynamic load balancing (traffic shaping) between nodes notably improves network performance. These results provide insights into critical aspects related to future 5G network management.
2026
Inglese
Pietri, M., Hadjidimitriou, N., Mamei, M., Picone, M., Rossini, E., Sanna, E. M., Adzic, J., Buldorini, A., Traffic analysis and resource adaptation in large-scale 5G multi-layer edge networks, <<PERVASIVE AND MOBILE COMPUTING>>, 2026; (116): N/A-N/A. [doi:https://doi.org/10.1016/j.pmcj.2025.102158] [https://hdl.handle.net/10807/339224]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/339224
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