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Main Authors: Zhu, Fenghao, Wang, Bohao, Yang, Zhaohui, Huang, Chongwen, Zhang, Zhaoyang, Alexandropoulos, George C., Yuen, Chau, Debbah, Merouane
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2303.12653
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author Zhu, Fenghao
Wang, Bohao
Yang, Zhaohui
Huang, Chongwen
Zhang, Zhaoyang
Alexandropoulos, George C.
Yuen, Chau
Debbah, Merouane
author_facet Zhu, Fenghao
Wang, Bohao
Yang, Zhaohui
Huang, Chongwen
Zhang, Zhaoyang
Alexandropoulos, George C.
Yuen, Chau
Debbah, Merouane
contents Beamforming with large-scale antenna arrays has been widely used in recent years, which is acknowledged as an important part in 5G and incoming 6G. Thus, various techniques are leveraged to improve its performance, e.g., deep learning, advanced optimization algorithms, etc. Although its performance in many previous research scenarios with deep learning is quite attractive, usually it drops rapidly when the environment or dataset is changed. Therefore, designing effective beamforming network with strong robustness is an open issue for the intelligent wireless communications. In this paper, we propose a robust beamforming self-supervised network, and verify it in two kinds of different datasets with various scenarios. Simulation results show that the proposed self-supervised network with hybrid learning performs well in both classic DeepMIMO and new WAIR-D dataset with the strong robustness under the various environments. Also, we present the principle to explain the rationality of this kind of hybrid learning, which is instructive to apply with more kinds of datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2303_12653
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Robust Millimeter Beamforming via Self-Supervised Hybrid Deep Learning
Zhu, Fenghao
Wang, Bohao
Yang, Zhaohui
Huang, Chongwen
Zhang, Zhaoyang
Alexandropoulos, George C.
Yuen, Chau
Debbah, Merouane
Information Theory
Machine Learning
Beamforming with large-scale antenna arrays has been widely used in recent years, which is acknowledged as an important part in 5G and incoming 6G. Thus, various techniques are leveraged to improve its performance, e.g., deep learning, advanced optimization algorithms, etc. Although its performance in many previous research scenarios with deep learning is quite attractive, usually it drops rapidly when the environment or dataset is changed. Therefore, designing effective beamforming network with strong robustness is an open issue for the intelligent wireless communications. In this paper, we propose a robust beamforming self-supervised network, and verify it in two kinds of different datasets with various scenarios. Simulation results show that the proposed self-supervised network with hybrid learning performs well in both classic DeepMIMO and new WAIR-D dataset with the strong robustness under the various environments. Also, we present the principle to explain the rationality of this kind of hybrid learning, which is instructive to apply with more kinds of datasets.
title Robust Millimeter Beamforming via Self-Supervised Hybrid Deep Learning
topic Information Theory
Machine Learning
url https://arxiv.org/abs/2303.12653