ITCRLGDec 13, 2023

Graph Neural Network-Based Bandwidth Allocation for Secure Wireless Communications

arXiv:2312.14958v17 citationsh-index: 732023 IEEE International Conference on Communications Workshops (ICC Workshops)
Originality Incremental advance
AI Analysis

It addresses secure resource allocation for wireless networks, offering incremental improvements in efficiency and robustness.

This paper tackles the problem of bandwidth allocation for secure wireless communications in the presence of an eavesdropper, proposing graph neural network (GNN)-based methods that achieve a comparable sum secrecy rate to iterative search with significantly lower computational complexity.

This paper designs a graph neural network (GNN) to improve bandwidth allocations for multiple legitimate wireless users transmitting to a base station in the presence of an eavesdropper. To improve the privacy and prevent eavesdropping attacks, we propose a user scheduling algorithm to schedule users satisfying an instantaneous minimum secrecy rate constraint. Based on this, we optimize the bandwidth allocations with three algorithms namely iterative search (IvS), GNN-based supervised learning (GNN-SL), and GNN-based unsupervised learning (GNN-USL). We present a computational complexity analysis which shows that GNN-SL and GNN-USL can be more efficient compared to IvS which is limited by the bandwidth block size. Numerical simulation results highlight that our proposed GNN-based resource allocations can achieve a comparable sum secrecy rate compared to IvS with significantly lower computational complexity. Furthermore, we observe that the GNN approach is more robust to uncertainties in the eavesdropper's channel state information, especially compared with the best channel allocation scheme.

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