Beam Learning -- Using Machine Learning for Finding Beam Directions
Saidhiraj Amuru

TL;DR
This paper introduces a machine learning approach using multi-armed bandits to identify beam directions in mmWave communications, enabling coexistence with incumbent technologies like 802.11ad and WiGig by detecting interference-free paths.
Contribution
It presents a novel blind beam direction detection method using multi-armed bandits, facilitating coexistence in 5G mmWave systems without prior knowledge of incumbent behaviors.
Findings
Machine learning algorithms outperform traditional methods in blind beam detection.
The proposed approach effectively identifies interference-free spatial directions.
Numerical results demonstrate improved throughput and coexistence capabilities.
Abstract
Beamforming is the key enabler for wireless communications in the mmWave bands. 802.11ad and WiGig are wireless technologies that currently use the 60 GHz unlicensed mmWave spectrum via beamforming techniques. It is likely that 5G systems will be considered for 60GHz unlicensed spectrum (apart from other unlicensed bands) deployments and hence must co-exist with 802.11ad and WiGig. 3GPP is taking steps towards achieving the same and the standardization for this is underway. The first step to achieve this co-existence is to find the interference-free directions, in other words identify the directions in which the nodes using these incumbent technologies are communicating and eliminate those directions from further communications. Such a mechanism can help to exploit the spatial holes rather than avoid communications even when only a few spatial directions are used by incumbents. Such a…
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