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Original paper

Deep Learning for mmWave Beam and Blockage Prediction Using Sub-6 GHz Channels

Volume: 68, Issue: 9, Pages: 5504 - 5518
Published: Jun 19, 2020
Abstract
Predicting the millimeter wave (mmWave) beams and blockages using sub-6 GHz channels has the potential of enabling mobility and reliability in scalable mmWave systems. Prior work has focused on extracting spatial channel characteristics at the sub-6 GHz band and then use them to reduce the mmWave beam training overhead. This approach still requires beam refinement at mmWave and does not normally account for the different dielectric properties at...
Paper Details
Title
Deep Learning for mmWave Beam and Blockage Prediction Using Sub-6 GHz Channels
Published Date
Jun 19, 2020
Volume
68
Issue
9
Pages
5504 - 5518
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