Intelligent Traffic Engineering for 6G Heterogeneous Transport Networks

Author:

Hisyam Ng Hibatul Azizi1ORCID,Mahmoodi Toktam1ORCID

Affiliation:

1. Department of Engineering, King’s College London, Strand, London WC2R 2LS, UK

Abstract

Novel architectures incorporating transport networks and artificial intelligence (AI) are currently being developed for beyond 5G and 6G technologies. Given that the interfacing mobile and transport network nodes deliver high transactional packet volume in downlink and uplink streams, 6G networks envision adopting diverse transport networks, including non-terrestrial types of transport networks such as the satellite network, High-Altitude Platform Systems (HAPS), and DOCSIS cable TV. Hence, there is a need to match the traffic to the transport network. This paper focuses on such a matching problem and defines a method that leverages machine learning and mixed-integer linear programming. Consequently, the proposed scheme in this paper is to develop a traffic steering capability based on types of transport networks, namely, optical, satellite, and DOCSIS cable. Novel findings demonstrate a more than 90% accuracy of steered traffic to respective types of transport networks for dedicated transport network resources.

Publisher

MDPI AG

Reference30 articles.

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