Litcius/Paper detail

Deep Learning for mmWave Beam-Management: State-of-the-Art, Opportunities and Challenges

Ke Ma, Zhaocheng Wang, Wenqiang Tian, Sheng Chen, Lajos Hanzo

2022IEEE Wireless Communications34 citationsDOI

Abstract

Benefiting from huge bandwidth resources, millimeter-wave (mmWave) communications provide one of the most promising technologies for next-generation wireless networks. To compensate for the high pathloss of mmWave signals, large-scale antenna arrays are required both at the base stations and user equipment to establish directional beamforming, where beam-management is adopted to acquire and track the optimal beam pair having the maximum received power. Naturally, narrow beams are required for achieving high beamforming gain, but they impose enormous training overhead and high sensitivity to blockages. As a remedy, deep learning (DL) may be harnessed for beam-management. First, the current state-of-the-art is reviewed, followed by the associated challenges and future research opportunities. We conclude by highlighting the associated DL design insights and novel beam-management mechanisms.

Topics & Concepts

BeamformingComputer scienceExtremely high frequencyBase stationBandwidth (computing)Overhead (engineering)WirelessTelecommunicationsPower managementSoftware deploymentBeam (structure)Antenna (radio)TransmitterElectronic engineeringPower (physics)EngineeringChannel (broadcasting)PhysicsOperating systemQuantum mechanicsCivil engineeringMillimeter-Wave Propagation and ModelingMicrowave Engineering and WaveguidesAntenna Design and Analysis