Leveraging DRL for Traffic Prioritization in 5G and Beyond TSN-based Transport Networks
Metadatos
Mostrar el registro completo del ítemAutor
Prados Garzón, Jonathan; Chinchilla Romero, Lorena; Muñoz Luengo, Pablo; Ameigeiras Gutiérrez, Pablo José; Ramos Muñoz, Juan JoséMateria
DRL Time-Sensitive Networking (TSN) Asynchronous Traffic Shape 5G Transport Networks
Fecha
2022-09-08Referencia bibliográfica
Prados-Garzon, Jonathan, Chinchilla-Romero, Lorena, Muñoz, Pablo, Ameigeiras, Pablo, & Ramos-Munoz, Juan J. (2022, September 8). Leveraging DRL for Traffic Prioritization in 5G and Beyond TSN-based Transport Networks. XXXVII Symposium of the International Union of Radio Science (URSI 2022), Malaga, Spain. https://doi.org/10.5281/zenodo.7060474
Patrocinador
H2020 research and innovation project 5G-CLARITY (Grant No. 871428); TRUE5G (PID2019- 108713RB-C53); 6G-CHRONOS (TSI-063000-2021-28)Resumen
Time-Sensitive Networking (TSN) is expected to become a key layer 2 technology for 5G and Beyond (5GB) transport networks (TN) as it allows for services with stringent and deterministic quality-of-service constraints and their coexistence with non-performance-sensitive traffic. Autonomous solutions for configuring TSN-based TNs are essential to ensure the deterministic QoS requisites of the 5GB streams while facilitating the zero-touch management of the network and reducing the operational costs. However, due to the configuration flexibility offered by TSN networks, using exact optimization methods to develop such solutions usually results in algorithms with high computational complexity. In this work, we propose and evaluate an initial design of a Reinforcement Learning (RL)-based solution for the long-term configuration of asynchronous TSN-based 5GB TNs. We successfully validated the proper operation of the proposal for an industrial private 5G scenario.