Empowering Digital Twin for Future Networks with Graph Neural Networks: Overview, Enabling Technologies, Challenges, and Opportunities

Author:

Ngo Duc-Thinh12ORCID,Aouedi Ons2,Piamrat Kandaraj2ORCID,Hassan Thomas1ORCID,Raipin-Parvédy Philippe1ORCID

Affiliation:

1. Orange Innovation, 35510 Cesson-Sévigné, France

2. IMT Atlantique, Nantes University, École Centrale Nantes, CNRS, INRIA, LS2N, UMR 6004, 44000 Nantes, France

Abstract

As the complexity and scale of modern networks continue to grow, the need for efficient, secure management, and optimization becomes increasingly vital. Digital twin (DT) technology has emerged as a promising approach to address these challenges by providing a virtual representation of the physical network, enabling analysis, diagnosis, emulation, and control. The emergence of Software-defined network (SDN) has facilitated a holistic view of the network topology, enabling the use of Graph neural network (GNN) as a data-driven technique to solve diverse problems in future networks. This survey explores the intersection of GNNs and Network digital twins (NDTs), providing an overview of their applications, enabling technologies, challenges, and opportunities. We discuss how GNNs and NDTs can be leveraged to improve network performance, optimize routing, enable network slicing, and enhance security in future networks. Additionally, we highlight certain advantages of incorporating GNNs into NDTs and present two case studies. Finally, we address the key challenges and promising directions in the field, aiming to inspire further advancements and foster innovation in GNN-based NDTs for future networks.

Publisher

MDPI AG

Subject

Computer Networks and Communications

Reference140 articles.

1. Network Digital Twin: Context, Enabling Technologies, and Opportunities;Almasan;IEEE Commun. Mag.,2022

2. Zhou, C., Yang, H., Duan, X., Lopez, D., Pastor, A., Wu, Q., Boucadair, M., and Jacquenet, C. (2023, October 01). Digital Twin Network: Concepts and Reference Architecture. Available online: https://datatracker.ietf.org/doc/draft-irtf-nmrg-network-digital-twin-arch/04/.

3. Empowering 6G Communication Systems with Digital Twin Technology: A Comprehensive Survey;Kuruvatti;IEEE Access,2022

4. Graph-Based Deep Learning for Communication Networks: A Survey;Jiang;Comput. Commun.,2022

5. Learning Combinatorial Optimization on Graphs: A Survey with Applications to Networking;Vesselinova;IEEE Access,2020

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