Federated Learning Enabled Channel Estimation for RIS-Aided Multi-User Wireless Systems

Wen-Rui Shen, Zhijin Qin, A. Nallanathan
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引用次数: 2

Abstract

Channel estimation is one of the essential tasks of realizing reconfigurable intelligent surface (RIS)-aided communication systems. However, the RIS introduces a high-dimension cascaded channel with complicated distribution. In this case, deep learning (DL) enabled channel estimation has been proposed to tackle this problem. In most previous works, model training is conducted via centralized model learning, in which the base station (BS) collects training data from all users and lead to excessive transmission overhead. To address this challenge, this paper proposes a federated deep residual learning neural network (FDReLNet)-base channel estimation framework in an RIS-aided multi-user OFDM system. For each user, we design a deep residual neural network updated by the local dataset and only send model weights to the BS so as to train a global model. To verify the effectiveness and robustness of the FDReLNet, we update the well-trained global model to the newly joint user and test its performance. The simulation results demonstrate that our proposed FDReLNet can significantly reduce transmission over-head while maintain satisfactory channel estimation accuracy.
基于联邦学习的ris辅助多用户无线系统信道估计
信道估计是实现可重构智能表面(RIS)辅助通信系统的关键任务之一。然而,RIS引入了一个高维级联通道,其分布复杂。在这种情况下,已经提出了支持深度学习(DL)的信道估计来解决这个问题。在以往的工作中,模型训练大多采用集中式模型学习的方式进行,基站(BS)收集所有用户的训练数据,导致传输开销过大。为了解决这一问题,本文提出了一种基于联邦深度残差学习神经网络(FDReLNet)的ris辅助多用户OFDM系统信道估计框架。对于每个用户,我们设计了一个由局部数据集更新的深度残差神经网络,只向BS发送模型权值,以训练全局模型。为了验证FDReLNet的有效性和鲁棒性,我们将训练好的全局模型更新到新的联合用户,并测试其性能。仿真结果表明,本文提出的FDReLNet在保持令人满意的信道估计精度的同时,显著降低了传输开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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