Exploitation of Channel-Learning for Enhancing 5G Blind Beam Index
Detection
- URL: http://arxiv.org/abs/2012.03631v1
- Date: Mon, 7 Dec 2020 12:24:32 GMT
- Title: Exploitation of Channel-Learning for Enhancing 5G Blind Beam Index
Detection
- Authors: Ji Yoon Han, Ohyun Jo and Juyeop Kim
- Abstract summary: This work investigates how machine learning technology can improve the performance of 5G cell and beam index search in practice.
We propose and implement new channel-learning schemes to enhance the performance of 5G beam index detection.
- Score: 1.9981375888949475
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Proliferation of 5G devices and services has driven the demand for wide-scale
enhancements ranging from data rate, reliability, and compatibility to sustain
the ever increasing growth of the telecommunication industry. In this regard,
this work investigates how machine learning technology can improve the
performance of 5G cell and beam index search in practice. The cell search is an
essential function for a User Equipment (UE) to be initially associated with a
base station, and is also important to further maintain the wireless
connection. Unlike the former generation cellular systems, the 5G UE faces with
an additional challenge to detect suitable beams as well as the cell identities
in the cell search procedures. Herein, we propose and implement new
channel-learning schemes to enhance the performance of 5G beam index detection.
The salient point lies in the use of machine learning models and softwarization
for practical implementations in a system level. We develop the proposed
channel-learning scheme including algorithmic procedures and corroborative
system structure for efficient beam index detection. We also implement a
real-time operating 5G testbed based on the off-the-shelf Software Defined
Radio (SDR) platform and conduct intensive experiments with commercial 5G base
stations. The experimental results indicate that the proposed channel-learning
schemes outperform the conventional correlation-based scheme in real 5G channel
environments.
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