TEFNET24: Reference Packet Optical Network Topology for Edge to Core Transport [Invited]
Creators
-
Telefonica Research and Development
(Hosting institution)
-
Rivas-Moscoso, José Manuel
(Contact person)1
-
Arpanaei, Farhad
(Researcher)2
- Otero Pérez, Gabriel (Researcher)2
- Martínez Jiménez, José David (Researcher)1
- Fernández-Palacios, Juan Pedro (Supervisor)1
- González de Dios, Óscar (Researcher)1
- Contreras, Luis Miguel (Researcher)1
- Sánchez-Macián, Alfonso (Researcher)2
- Hernández, José Alberto (Researcher)2
- Larrabeiti, David (Supervisor)2
- Folgueira, Jesús (Supervisor)1
Description
In this paper, we introduce TEFNET24, a reference multi-layer hierarchical network topology that spans from access to core networks, specifically designed to meet the demands of beyond-5G and and prepared for next-generation 6G communication systems. This topology, inspired by the actual network deployments of Telefónica in medium-sized countries in Europe and America, integrates both IP and optical (DWDM) layers to provide a comprehensive framework for network design, optimization, and analysis. Our primary contribution is the development of an open-source benchmarking network, accessible to both researchers and industry professionals. This resource aims to facilitate the study and advancement of integrated IP and optical networks, allowing researchers to address key challenges such as traffic aggregation, latency reduction, cost efficiency, and support for advanced applications. We provide guidelines for utilizing this benchmark network, enabling users to evaluate and enhance their solutions for AI-driven network management, ultra-reliable low-latency communication, enhanced mobile broadband, and massive machine-type communication. By sharing this detailed and practical benchmarking network, we seek to foster innovation and collaboration within the optical network community, driving forward the capabilities and performance of future communication networks.
Files
Files
(4.9 MB)
Name | Size | Download all |
---|---|---|
md5:1094e195f9d89b9e2ff914ab20f5635a
|
1.8 MB | Download |
md5:e47af8612fc965c6925b2a9f2854b289
|
1.2 MB | Download |
md5:2c59828b38bd21d73da9f4e04b699018
|
1.8 MB | Download |