Litcius/Paper detail

Flexible Unsupervised Learning for Massive MIMO Subarray Hybrid Beamforming

Hamed Hojatian, Jérémy Nadal, Jean‐François Frigon, François Leduc-Primeau

2022GLOBECOM 2022 - 2022 IEEE Global Communications Conference17 citationsDOI

Abstract

Hybrid beamforming is a promising technology to improve the energy efficiency of massive MIMO systems. In particular, subarray hybrid beamforming can further decrease power consumption by reducing the number of phase-shifters. However, designing the hybrid beamforming vectors is a complex task due to the discrete nature of the subarray connections and the phase-shift amounts. Finding the optimal connections between RF chains and antennas requires solving a non-convex problem in a large search space. In addition, conventional solutions assume that perfect channel state information (CSI) is available, which is not the case in practical systems. Therefore, we propose a novel unsupervised learning approach to design the hybrid beamforming for any subarray structure while supporting quantized phase-shifters and noisy CSI. One major feature of the proposed architecture is that no beamforming codebook is required, and the neural network is trained to take into account the phase-shifter quantization. Simulation results show that the proposed deep learning solutions can achieve higher sum-rates than existing methods.

Topics & Concepts

CodebookBeamformingComputer scienceMIMOChannel state informationElectronic engineeringPhase shift moduleArtificial neural networkComputer engineeringWirelessAlgorithmArtificial intelligenceTelecommunicationsEngineeringMicrowaveMillimeter-Wave Propagation and ModelingAntenna Design and AnalysisMicrowave Engineering and Waveguides