基于人工神经网络的5G新无线电中继选择

S. Aldossari, Kwang-Cheng Chen
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引用次数: 2

摘要

毫米波为更好地实现增强型移动宽带(eMBB)和5G-新无线电(5G- nr)超可靠低延迟通信(uRLLC)的支柱技术提供了宽频宽的替代频段。利用毫米波频段,中继站辅助无线接入网(RAN)中基站的覆盖成为一种有吸引力的技术。然而,实现最强链路的中继选择成为使用毫米波实现RAN的关键技术。一种颠覆性的中继选择方法是利用现有的运行数据,并应用适当的人工神经网络(ANN)和深度学习算法来缓解毫米波频段的严重衰落。在本文中,我们利用具有多层感知的人工神经网络分类技术来预测多个传输链路的路径损耗,并基于一定的损耗水平,从而进行有效的中继选择,并推荐切换到合适的路径。将具有多层感知的人工神经网络与其他ML算法进行比较,以证明5G-NR中继选择的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relay Selection for 5G New Radio Via Artificial Neural Networks
Millimeter-wave supplies an alternative frequency band of wide bandwidth to better realize pillar technologies of enhanced mobile broadband (eMBB) and ultra-reliable and lowlatency communication (uRLLC) for 5G- new radio (5G-NR). When using mmWave frequency band, relay stations to assist the coverage of base stations in radio access network (RAN) emerge as an attractive technique. However, relay selection to result in the strongest link becomes the critical technology to facilitate RAN using mmWave. A disruptive approach toward relay selection is to take advantage of existing operating data and apply appropriate artificial neural networks (ANN) and deep learning algorithms to alleviate severe fading in mmWave band. In this paper, we apply classification techniques using ANN with multilayer perception to predict the path loss of multiple transmitted links and base on a certain loss level, and thus execute effective relay selection, which also recommends the handover to an appropriate path. ANN with multilayer perception are compared with other ML algorithms to demonstrate effectiveness for relay selection in 5G-NR.
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