Beam-Selection for 5G/B5G Networks Using Machine Learning: A Comparative Study

被引:7
作者
Chatzoglou, Efstratios [1 ]
Goudos, Sotirios K. K. [2 ]
机构
[1] Hellen Open Univ, Dept Comp Sci, Aristotelous 18, Patras 26335, Greece
[2] Aristotle Univ Thessaloniki, Dept Phys, ELEDIA AUTH, Saloniki 54124, Greece
关键词
5G; MIMO; B5G; beam selection; machine learning; V2I; V2X; deep learning; ensemble learning; classification; VEHICULAR NETWORK; TECHNOLOGY;
D O I
10.3390/s23062967
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
A challenging problem in millimeter wave (mmWave) communications for the fifth generation of cellular communications and beyond (5G/B5G) is the beam selection problem. This is due to severe attenuation and penetration losses that are inherent in the mmWave band. Thus, the beam selection problem for mmWave links in a vehicular scenario can be solved as an exhaustive search among all candidate beam pairs. However, this approach cannot be assuredly completed within short contact times. On the other hand, machine learning (ML) has the potential to significantly advance 5G/B5G technology, as evidenced by the growing complexity of constructing cellular networks. In this work, we perform a comparative study of using different ML methods to solve the beam selection problem. We use a common dataset for this scenario found in the literature. We increase the accuracy of these results by approximately 30%. Moreover, we extend the given dataset by producing additional synthetic data. We apply ensemble learning techniques and obtain results with about 94% accuracy. The novelty of our work lies in the fact that we improve the existing dataset by adding more synthetic data and by designing a custom ensemble learning method for the problem at hand.
引用
收藏
页数:14
相关论文
共 41 条
[31]  
Oliveira A., 5GM BEAM SELECTION
[32]   Deep Learning-Aided 6G Wireless Networks: A Comprehensive Survey of Revolutionary PHY Architectures [J].
Ozpoyraz, Burak ;
Dogukan, Ali Tugberk ;
Gevez, Yarkin ;
Altun, Ufuk ;
Basar, Ertugrul .
IEEE OPEN JOURNAL OF THE COMMUNICATIONS SOCIETY, 2022, 3 :1749-1809
[33]   Millimeter-Wave Beamforming as an Enabling Technology for 5G Cellular Communications: Theoretical Feasibility and Prototype Results [J].
Roh, Wonil ;
Seol, Ji-Yun ;
Park, JeongHo ;
Lee, Byunghwan ;
Lee, Jaekon ;
Kim, Yungsoo ;
Cho, Jaeweon ;
Cheun, Kyungwhoon ;
Aryanfar, Farshid .
IEEE COMMUNICATIONS MAGAZINE, 2014, 52 (02) :106-113
[34]   Deep Learning on Multimodal Sensor Data at the Wireless Edge for Vehicular Network [J].
Salehi, Batool ;
Reus-Muns, Guillem ;
Roy, Debashri ;
Wang, Zifeng ;
Jian, Tong ;
Dy, Jennifer ;
Ioannidis, Stratis ;
Chowdhury, Kaushik .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2022, 71 (07) :7639-7655
[35]   A systematic analysis of performance measures for classification tasks [J].
Sokolova, Marina ;
Lapalme, Guy .
INFORMATION PROCESSING & MANAGEMENT, 2009, 45 (04) :427-437
[36]   Machine learning in vehicular networking: An overview [J].
Tan, Kang ;
Bremner, Duncan ;
Le Kernec, Julien ;
Zhang, Lei ;
Imran, Muhammad .
DIGITAL COMMUNICATIONS AND NETWORKS, 2022, 8 (01) :18-24
[37]   Comprehensive Survey on Machine Learning in Vehicular Network: Technology, Applications and Challenges [J].
Tang, Fengxiao ;
Mao, Bomin ;
Kato, Nei ;
Gui, Guan .
IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2021, 23 (03) :2027-2057
[38]   Future Intelligent and Secure Vehicular Network Toward 6G: Machine-Learning Approaches [J].
Tang, Fengxiao ;
Kawamot, Yuichi ;
Kato, Nei ;
Liu, Jiajia .
PROCEEDINGS OF THE IEEE, 2020, 108 (02) :292-307
[39]   LIDAR and Position-Aided mmWave Beam Selection With Non-Local CNNs and Curriculum Training [J].
Zecchin, Matteo ;
Mashhadi, Mahdi Boloursaz ;
Jankowski, Mikolaj ;
Gunduz, Deniz ;
Kountouris, Marios ;
Gesbert, David .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2022, 71 (03) :2979-2990
[40]  
Zhang, 2004, P 17 INT FLORIDA ART