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Optimization of the D2D Topology Formation Using a Novel Two-Stage Deep ML Approach for 6G Mobile Networks

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Abstract

Optimizing device-to-device (D2D) topologies is pivotal for enhancing the performance and efficiency of 6G networks. This paper introduces a novel approach for forming optimal subnet trees within the 6G networks using BDIx agents and advanced minimum-weight spanning tree (MWST/MST) algorithms augmented by graph neural networks (GNNs), and feedforward neural networks (FFNNs). Our solution aims to significantly boost network performance, particularly in highdemand scenarios such as urban areas, large-scale events, and remote locations. Our approach dynamically adapts to changing network conditions, user movements, and traffic patterns by minimizing the power consumption and maximizing the throughput. We implement various MWST algorithms, including Kruskal’s, Prim’s, and Boruvka’s algorithms, and introduce a GNN model to predict edge weights combined with FFNNs to select parent nodes (called GNN-FFNN model), aiding in the construction of minimum-weight spanning trees (MWST). Additionally, a “weighted distance” metric is proposed to analyze network performance comprehensively. The proposed AI/MLdriven solution integrates BDIx agents with MWST algorithms, focusing on optimizing subnets under gNodeB in 6G networks, enhancing data transmission efficiency, reducing latency, and increasing throughput. This research contributes to developing scalable and flexible network management solutions suitable for diverse configurations and architectures.

Keywords

Device-to-device (D2D) communication 6G networks minimum-weight scanning tree (MWST) graph neural networks (GNNs) fedforward neural networks (FFNN) BDIx agents network optimization power consumption throughput dynamic adaptation

Authors

I. Ioannou
Department of Computer Science, University of Cyprus and CYENS - Centre of Excellence, Cyprus
M. Raspopoulos
INSPIRE Research Centre, University of Central Lancashire, Larnaca, Cyprus
P. Nagaradjane
Department of ECE, Sri Sivasubramaniya Nadar College of Engineering, Chennai, India
C. Christophorou
Department of Computer Science, University of Cyprus and CYENS - Centre of Excellence, Cyprus
A. Khalifeh
Electrical Engineering and Information Technology, German Jordanian University, Amman, Jordan
V. Vassiliou
Department of Computer Science, University of Cyprus and CYENS - Centre of Excellence, Cyprus

Publication Details

Type
proceedings
Publisher
IEEE
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