Machine Learning-Based Digital Pre-Distortion Scheme for RoF Systems and Experimental 5G mm-waves Fiber-Wireless Implementation

L. A. M. Pereira, E. S. Lima, L. Mendes, Arismar Cerqueira S. Jr.
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引用次数: 2

Abstract

− The advent of the 5th generation of mobile networks brought a large number of new use case and applications to be supported by the physical layer (PHY), which must be more flexible than all previous radio access networks (RAN). The concept of the centralized RAN (C-RAN) allows all the baseband processing to be performed in the central office, simplifying the network deployment and also allowing the operators to dynamically control the PHY according with the applications requirements. The radio-frequency (RF) signal generated by the C-RAN can be transported to the remote radio unit (RRU) by using a radio over fiber (RoF) system. In this paper, we propose two RoF approaches for composing the transport and access networks of the next-generation systems. The first investigation relies on the implementation of a machine learning-based digital pre-distortion (DPD), designed for RoF systems. In the second approach, we implement an RoF system and characterize the optical and electrical power levels aiming to reduce the RoF non-linear distortions. The overall link performance is evaluated by measuring the error vector magnitude (EVM RMS ) and 590 Mbit/s is achieved with EVM RMS as low as 4.4% in a 10 m reach cell.
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基于机器学习的RoF系统数字预失真方案及5G毫米波光纤无线实现实验
−第五代移动网络的出现带来了大量新的用例和应用程序,物理层(PHY)必须比以前的所有无线电接入网络(RAN)更灵活。集中式RAN(C-RAN)的概念允许在中央局中执行所有基带处理,简化了网络部署,还允许运营商根据应用要求动态控制PHY。C-RAN生成的射频(RF)信号可以通过使用光纤无线电(RoF)系统传输到远程无线电单元(RRU)。在本文中,我们提出了两种RoF方法来组成下一代系统的传输和接入网络。第一项研究依赖于为RoF系统设计的基于机器学习的数字预失真(DPD)的实现。在第二种方法中,我们实现了RoF系统,并对光功率和电功率水平进行了表征,旨在减少RoF非线性失真。通过测量误差矢量幅度(EVM RMS)来评估整体链路性能,并且在10m到达小区中,EVM RMS低至4.4%时可实现590Mbit/s。
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来源期刊
Journal of Microwaves, Optoelectronics and Electromagnetic Applications
Journal of Microwaves, Optoelectronics and Electromagnetic Applications Engineering-Electrical and Electronic Engineering
CiteScore
1.70
自引率
0.00%
发文量
32
审稿时长
24 weeks
期刊介绍: The Journal of Microwaves, Optoelectronics and Electromagnetic Applications (JMOe), published by the Brazilian Microwave and Optoelectronics Society (SBMO) and Brazilian Society of Electromagnetism (SBMag), is a professional, refereed publication devoted to disseminating technical information in the areas of Microwaves, Optoelectronics, Photonics, and Electromagnetic Applications. Authors are invited to submit original work in one or more of the following topics. Electromagnetic Field Analysis[...] Computer Aided Design [...] Microwave Technologies [...] Photonic Technologies [...] Packaging, Integration and Test [...] Millimeter Wave Technologies [...] Electromagnetic Applications[...] Other Topics [...] Antennas [...] Articles in all aspects of microwave, optoelectronics, photonic devices and applications will be covered in the journal. All submitted papers will be peer-reviewed under supervision of the editors and the editorial board.
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