毫米波下一代网络的波束剖面和波束成形建模

E. Fathalla, Sahar Zargarzadeh, Chunsheng Xin, Hongyi Wu, Peng Jiang, Joao F. Santos, Jacek Kibiłda, Aloizio Pereira da Silva
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引用次数: 0

摘要

本文在毫米波测试台上对毫米波波束剖面进行了实验研究,并基于实验数据建立了毫米波波束成形的机器学习模型。我们从波束剖面和波束形成的机器学习模型中获得的数据集对于复杂和动态毫米波网络中的网络拓扑优化、用户设备关联、功率分配和波束调度等广泛的网络设计问题具有价值。我们使用了两个商业级毫米波测试平台,其工作频率分别为27 Ghz和71 Ghz,用于波束分析。获得的数据集用于训练机器学习模型来估计接收到的下行信号功率,以及发射器(基站)范围内不同地理位置的接收器(用户设备)的数据速率。结果表明,预测精度高,均方误差(损失)低,表明该模型能够估计波束覆盖的每个单独接收器的接收信号功率或数据速率。该数据集和基于机器学习的波束形成模型可以帮助研究人员优化毫米波网络的各种网络设计问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beam Profiling and Beamforming Modeling for mmWave NextG Networks
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 showed 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.
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