论文标题

学习合作波束与边缘授权的图形神经网络成长

Learning Cooperative Beamforming with Edge-Update Empowered Graph Neural Networks

论文作者

Wang, Yunqi, Li, Yang, Shi, Qingjiang, Wu, Yik-Chung

论文摘要

在现代无线网络中,合作波束形成设计被认为是一种有效的方法,以满足各种无线数据运输的需求大大增加。它在常规方法中作为优化问题提出,并以实例的方式迭代。最近,通过将映射函数从问题实例近似于相应的解决方案的映射函数,已经出现了基于学习的方法。在各种神经网络体系结构中,图形神经网络(GNN)可以有效地利用无线网络中的图形拓扑,以在看不见的问题大小上获得更好的概括能力。但是,当前的GNN仅配备了节点上的机制,这限制了它对更复杂的问题进行建模,例如合作波束形成设计,其中波束形式在无线网络的图边缘上。为了填补这一空白,我们提出了一个边缘神经网络(Edge-gnn),通过将边缘上的机构纳入GNN,该机构在图形边缘学习了合作波束成形。仿真结果表明,所提出的Edge-GNN的总和速率比最先进的方法要短得多,并且可以很好地推广到不同数量的基站和用户设备。

Cooperative beamforming design has been recognized as an effective approach in modern wireless networks to meet the dramatically increasing demand of various wireless data traffics. It is formulated as an optimization problem in conventional approaches and solved iteratively in an instance-by-instance manner. Recently, learning-based methods have emerged with real-time implementation by approximating the mapping function from the problem instances to the corresponding solutions. Among various neural network architectures, graph neural networks (GNNs) can effectively utilize the graph topology in wireless networks to achieve better generalization ability on unseen problem sizes. However, the current GNNs are only equipped with the node-update mechanism, which restricts it from modeling more complicated problems such as the cooperative beamforming design, where the beamformers are on the graph edges of wireless networks. To fill this gap, we propose an edge-graph-neural-network (Edge-GNN) by incorporating an edge-update mechanism into the GNN, which learns the cooperative beamforming on the graph edges. Simulation results show that the proposed Edge-GNN achieves higher sum rate with much shorter computation time than state-of-the-art approaches, and generalizes well to different numbers of base stations and user equipments.

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