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Admission Control for 5G Core Network Slicing Based on Deep Reinforcement Learning

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Author(s):
Villota-Jacome, William F. ; Rendon, Oscar Mauricio Caicedo ; da Fonseca, Nelson L. S.
Total Authors: 3
Document type: Journal article
Source: IEEE SYSTEMS JOURNAL; v. 16, n. 3, p. 12-pg., 2022-05-23.
Abstract

Network slicing is a promising technology for providing customized logical and virtualized networks for the fifth-generation (5G) use-cases (enhanced mobile broadband, ultrareliable low-latency communications, and massive machine-type communications), which pose distinct quality of service (QoS) requirements. Admission control and resource allocation mechanisms are pivotal for realizing network slicing efficiently, but existing mechanisms focus on slicing the radio access network. This article proposes an approach encompassing intelligent and efficient mechanisms for admission control and resource allocation for network slicing in the 5G core network. The admission control mechanism introduces two solutions, one based on reinforcement learning (called SARA) and the other based on deep reinforcement learning (called DSARA). SARA and DSARA consider the QoS requirements of 5G use-cases, differentiate network core nodes from edge nodes, and process slice requests in time windows to favor the service provider's profit and resource utilization. Results show that SARA and DSARA overcome existing mechanisms for managing admission control and resource allocation in 5G core network slicing. (AU)

FAPESP's process: 19/03268-0 - Software defined networking routing with machine learning
Grantee:Daniela Maria Casas Velasco
Support Opportunities: Scholarships in Brazil - Master
FAPESP's process: 15/24494-8 - Communications and processing of big data in cloud and fog computing
Grantee:Nelson Luis Saldanha da Fonseca
Support Opportunities: Research Projects - Thematic Grants