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GNN-Based Power Allocation and User Association in Digital Twin Network for the Terahertz Band | IEEE Journals & Magazine | IEEE Xplore
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GNN-Based Power Allocation and User Association in Digital Twin Network for the Terahertz Band


Abstract:

The digital twin (DT) and terahertz (THz) wireless communication technologies have promoted the innovative development and application of 6G networks. Combining DT can ob...Show More

Abstract:

The digital twin (DT) and terahertz (THz) wireless communication technologies have promoted the innovative development and application of 6G networks. Combining DT can obtain efficient, collaborative, and intelligent management for THz wireless networks. However, the conflicts between large amounts of twin data and limited network resources make it difficult to improve the performance of DT networks. In this paper, a DT architecture for THz wireless networks is proposed, which maps a physical network in the THz band into a virtual DT network and represents the DT network as a graph structure. Furthermore, the THz channel model is provided, and the resource management problem with weighted mean rate as the optimization objective is proposed, which is transformed into a graph optimization problem. Based on this, a distributed message propagation algorithm is proposed, which uses the graph neural network to provide a solution. Simulation results show that the proposed scheme improves the weighted mean rate of the DT network for the THz band and outperforms the benchmark methods. It is also proved that the proposed distributed message propagation algorithm is scalable and can maintain good performance under different conditions.
Published in: IEEE Journal on Selected Areas in Communications ( Volume: 41, Issue: 10, October 2023)
Page(s): 3111 - 3121
Date of Publication: 15 September 2023

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