Litcius/Paper detail

Machine Learning for Millimeter Wave and Terahertz Beam Management: A Survey and Open Challenges

Muhammad Qurratulain Khan, Abdo Gaber, Philipp Schulz, Gerhard Fettweis

2023IEEE Access86 citationsDOIOpen Access PDF

Abstract

Next-generation wireless communication networks will benefit from beamforming gain to utilize higher bandwidths at millimeter wave (mmWave) and terahertz (THz) bands. For high directional gain, a beam management (BM) framework acquires and tracks optimal downlink and uplink beam pairs through exhaustive beam scan. However, for narrower beams at higher carrier frequencies this leads to a huge beam measurement overhead that negatively impacts the beam acquisition and tracking. Moreover, volatility of mmWave and THz channels, user random mobility patterns, and environmental changes further complicate the BM process. Consequently, machine learning (ML) algorithms that can identify and learn complex mobility patterns and track environmental dynamics have been identified as a remedy. In this article, we provide an overview of the existing ML-based mmWave/THz BM and beam tracking techniques. Especially, we highlight key characteristics of an optimal BM and tracking framework. By surveying the recent studies, we identify some open research challenges and provide our recommendations that can serve as a future direction for researchers in this area.

Topics & Concepts

Terahertz radiationBeamformingExtremely high frequencyComputer scienceTelecommunications linkWirelessTracking (education)Beam (structure)Overhead (engineering)Electronic engineeringTelecommunicationsPhysicsOpticsEngineeringOperating systemPsychologyPedagogyMillimeter-Wave Propagation and ModelingMicrowave Engineering and WaveguidesAdvanced MIMO Systems Optimization