Impact of Time-Varying Traffic Type on the Performance of Multilayer Networks
Conference poster, 2024

Traffic in backbone networks is characterized by strong seasonality, with clear patterns visible in various services and applications based on their usage throughout the day. Data-driven networks can learn these patterns to manage resources more efficiently as they become increasingly saturated. In this paper, we explore the benefits of traffic prediction and grooming across different traffic patterns. To achieve this, we simulate network operations using uniform sets of time-varying connection requests, where all demands in a simulation share the same traffic pattern related to a specific network-based service or application. Our goal is to thoroughly evaluate the robustness of the proposed techniques across diverse scenarios. The results will facilitate the design of future application-aware algorithms for the most efficient handling of each traffic pattern.

application–aware network

multilayer network

machine learning

Author

Aleksandra Knapińska

Wrocław University of Science and Technology

Piotr Lechowicz

Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks

Krzysztof Walkowiak

Wrocław University of Science and Technology

20th International Conference on Network and Service Management (CNSM)
Prague, ,

Subject Categories

Telecommunications

More information

Latest update

11/19/2024