Litcius/Paper detail

A Distributed Machine Learning-Based Approach for IRS-Enhanced Cell-Free MIMO Networks

Chen Chen, Sai Xu, Jiliang Zhang, Jie Zhang

2023IEEE Transactions on Wireless Communications35 citationsDOI

Abstract

In cell-free multiple input multiple output (MIMO) networks, multiple base stations (BSs) collaborate to achieve high spectral efficiency. Nevertheless, high penetration loss due to large blockages in harsh propagation environments is often an issue that severely degrades communication performance. Considering that intelligent reflecting surface (IRS) is capable of constructing digitally controllable reflection links in a low-cost manner, we investigate an IRS-enhanced downlink cell-free MIMO network in this paper. We aim to maximize the weighted sum rate (WSR) of all the users by jointly optimizing the transmit beamforming at the BSs and the reflection coefficients at the IRS. To address the optimization problem, we propose a fully distributed machine learning algorithm. Different from the conventional iterative optimization algorithms that require a central processing at the central processing unit (CPU) and large amount of channel state information and signaling exchange between the BSs and the CPU, in the proposed algorithm, each BS can locally design its beamforming vectors. Meanwhile, the IRS reflection coefficients are determined by one of the BSs. Simulation results show that the deployment of IRS can significantly boost the WSR and that the proposed algorithm can achieve a high WSR with a low computational complexity.

Topics & Concepts

Computer scienceMIMOBeamformingBase stationTelecommunications linkSpectral efficiencyChannel state informationCellular networkOptimization problemCentral processing unitAlgorithmComputer engineeringComputer networkWirelessTelecommunicationsComputer hardwareAdvanced Wireless Communication TechnologiesCooperative Communication and Network CodingAntenna Design and Analysis