利用 GNN 为多用户毫米波移动系统学习端到端混合精确编码

Ruiming Wang;Chenyang Yang;Shengqian Han;Jiajun Wu;Shuangfeng Han;Xiaoyun Wang
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引用次数: 0

摘要

混合预编码是毫米波(mmWave)多天线系统中以低成本实现高速率的一种高效技术。许多研究工作都在探索利用深度学习来优化混合预编码,尤其是在静态信道场景中。然而,在移动通信系统中,由于信道老化效应,毫米波通信的性能严重下降。此外,学习到的预编码策略应能适应动态环境,如活跃用户数量的变化,以避免重新训练的需要。本文采用主动优化方法,提出了一种端到端学习方法,可直接从接收到的上行探测参考信号中学习下行多用户模拟和数字混合前置编码器,而无需明确的信道估计和预测。我们考虑了实际蜂窝系统中使用的帧结构,并设计了一个并行主动优化网络(P-PONet)来同时学习多个下行链路子帧的混合前置编码。P-PONet 由多个图神经网络组成,可在不同系统规模下通用。仿真结果表明,所提出的 P-PONet 在总和速率性能和传音开销方面优于现有方法,并可通用于各种系统配置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning End-to-End Hybrid Precoding for Multi-User mmWave Mobile System With GNNs
Hybrid precoding is an efficient technique for achieving high rates at a low cost in millimeter wave (mmWave) multi-antenna systems. Many research efforts have explored the use of deep learning to optimize hybrid precoding, particularly in static channel scenarios. However, in mobile communication systems, the performance of mmWave communication severely degrades due to the channel aging effect. Furthermore, the learned precoding policy should be adaptable to dynamic environments, such as variations in the number of active users, to avoid the need for re-training. In this paper, resorting to the proactive optimization approach, we propose an end-to-end learning method to learn the downlink multi-user analog and digital hybrid precoders directly from the received uplink sounding reference signals, without explicit channel estimation and prediction. We take into account the frame structure used in practical cellular systems and design a parallel proactive optimization network (P-PONet) to concurrently learn hybrid precoding for multiple downlink subframes. The P-PONet consists of several graph neural networks, which enable the generalizability across different system scales. Simulation results show that the proposed P-PONet outperforms existing methods in terms of sum-rate performance and sounding overhead, and is generalizable to various system configurations.
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