TL;DR
This paper demonstrates that deep neural networks can accurately predict mmWave beam directions and blockages directly from sub-6GHz channel data, eliminating the need for extensive beam training and improving system reliability.
Contribution
It proves the existence of mapping functions for prediction, and develops a deep learning model that learns these mappings to enhance mmWave system performance.
Findings
Deep learning model predicts mmWave blockages with over 90% success.
Model accurately predicts optimal mmWave beams, approaching ideal data rates.
Eliminates the need for traditional beam training overhead.
Abstract
Predicting the millimeter wave (mmWave) beams and blockages using sub-6GHz channels has the potential of enabling mobility and reliability in scalable mmWave systems. These gains attracted increasing interest in the last few years. Prior work, however, has focused on extracting spatial channel characteristics at the sub-6GHz band first and then use them to reduce the mmWave beam training overhead. This approach has a number of limitations: (i) It still requires a beam search at mmWave, (ii) its performance is sensitive to the error associated with extracting the sub-6GHz channel characteristics, and (iii) it does not normally account for the different dielectric properties at the different bands. In this paper, we first prove that under certain conditions, there exist mapping functions that can predict the optimal mmWave beam and correct blockage status directly from the sub-6GHz…
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