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Autori principali: Fathalla, Efat Samir, Zargarzadeh, Sahar, Xin, Chunsheng, Wu, Hongyi, Jiang, Peng, Santos, Joao F., Kibilda, Jacek, da, Aloizio Pereira
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.13403
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author Fathalla, Efat Samir
Zargarzadeh, Sahar
Xin, Chunsheng
Wu, Hongyi
Jiang, Peng
Santos, Joao F.
Kibilda, Jacek
da, Aloizio Pereira
author_facet Fathalla, Efat Samir
Zargarzadeh, Sahar
Xin, Chunsheng
Wu, Hongyi
Jiang, Peng
Santos, Joao F.
Kibilda, Jacek
da, Aloizio Pereira
contents This paper presents an experimental study on mmWave beam profiling on a mmWave testbed, and develops a machine learning model for beamforming based on the experiment data. The datasets we have obtained from the beam profiling and the machine learning model for beamforming are valuable for a broad set of network design problems, such as network topology optimization, user equipment association, power allocation, and beam scheduling, in complex and dynamic mmWave networks. We have used two commercial-grade mmWave testbeds with operational frequencies on the 27 Ghz and 71 GHz, respectively, for beam profiling. The obtained datasets were used to train the machine learning model to estimate the received downlink signal power, and data rate at the receivers (user equipment with different geographical locations in the range of a transmitter (base station). The results have shown high prediction accuracy with low mean square error (loss), indicating the model's ability to estimate the received signal power or data rate at each individual receiver covered by a beam. The dataset and the machine learning-based beamforming model can assist researchers in optimizing various network design problems for mmWave networks.
format Preprint
id arxiv_https___arxiv_org_abs_2408_13403
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Beam Profiling and Beamforming Modeling for mmWave NextG Networks
Fathalla, Efat Samir
Zargarzadeh, Sahar
Xin, Chunsheng
Wu, Hongyi
Jiang, Peng
Santos, Joao F.
Kibilda, Jacek
da, Aloizio Pereira
Signal Processing
This paper presents an experimental study on mmWave beam profiling on a mmWave testbed, and develops a machine learning model for beamforming based on the experiment data. The datasets we have obtained from the beam profiling and the machine learning model for beamforming are valuable for a broad set of network design problems, such as network topology optimization, user equipment association, power allocation, and beam scheduling, in complex and dynamic mmWave networks. We have used two commercial-grade mmWave testbeds with operational frequencies on the 27 Ghz and 71 GHz, respectively, for beam profiling. The obtained datasets were used to train the machine learning model to estimate the received downlink signal power, and data rate at the receivers (user equipment with different geographical locations in the range of a transmitter (base station). The results have shown high prediction accuracy with low mean square error (loss), indicating the model's ability to estimate the received signal power or data rate at each individual receiver covered by a beam. The dataset and the machine learning-based beamforming model can assist researchers in optimizing various network design problems for mmWave networks.
title Beam Profiling and Beamforming Modeling for mmWave NextG Networks
topic Signal Processing
url https://arxiv.org/abs/2408.13403