Optimization of Flow Allocation in Asynchronous Deterministic 5G Transport Networks by Leveraging Data Analytics
Metadata
Show full item recordEditorial
IEEE Computer Soc
Materia
Transport Networks QoS Performance guarantees Flow Allocation Time-Sensitive Networking (TSN) 5G Data analytics Asynchronous Traffic Shaper (ATS) IEEE 802.1Qcr
Date
2023-03-01Referencia bibliográfica
Published version: J. Prados-Garzon, T. Taleb and M. Bagaa, "Optimization of Flow Allocation in Asynchronous Deterministic 5G Transport Networks by Leveraging Data Analytics," in IEEE Transactions on Mobile Computing, vol. 22, no. 3, pp. 1672-1687, 1 March 2023, doi: 10.1109/TMC.2021.3099979
Sponsorship
Union’s Horizon 2020, 101016509; 5G-CLARITY 871428; TRUE5G: PID2019-108713RB-C53.Abstract
Time-Sensitive Networking (TSN) and Deterministic
Networking (DetNet) technologies are increasingly recognized as
key levers of the future 5G transport networks (TNs) due to their
capabilities for providing deterministic Quality-of-Service and
enabling the coexistence of critical and best-effort services. Addi-
tionally, they rely on programmable and cost-effective Ethernet-
based forwarding planes. This article addresses the flow alloca-
tion problem in 5G backhaul networks realized as asynchronous
TSN networks, whose building block is the Asynchronous Traffic
Shaper. We propose an offline solution, dubbed “Next Generation
Transport Network Optimizer” (NEPTUNO), that combines ex-
act optimization methods and heuristic techniques and leverages
data analytics to solve the flow allocation problem. NEPTUNO
aims to maximize the flow acceptance ratio while guaranteeing
the deterministic Quality-of-Service requirements of the critical
flows. We carried out a performance evaluation of NEPTUNO
regarding the degree of optimality, execution time, and flow
rejection ratio. Furthermore, we compare NEPTUNO with a
novel online baseline solution for two different optimization goals.
Online methods compute the flow’s allocation configuration right
after the flow arrives at the network, whereas offline solutions
like NEPTUNO compute a long-term configuration allocation for
the whole network. Our results highlight the potential of data
analytics for the self-optimization of the future 5G TNs.