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The Effects of Rain on Terrestrial Links at K, Ka and E-Bands in South Korea: Based on Supervised Learning

机译:雨水对韩国k,ka和电子乐队的陆地联系的影响:基于监督学习

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At the rise of the fourth industrial revolution, artificial intelligence (AI), along with key enabling technologies such as millimeter waves (mm-waves) can be used to launch the fifth-generation (5G) and beyond communication links. However, the quality of radio links at higher frequency bands is limited by atmospheric elements. Among others, rainfall is the major propagation impairment at millimetric wave bands, which needs to be considered during the link budget planning. In this study, we investigated the rain attenuation results obtained from experimental data, existing models, and proposed supervised artificial neural network (SANN) at $K$ , $Ka$ , and $E$ -bands, respectively, for terrestrial links in South Korea. The measurement campaigns were between Incheon, National Radio Research Agency (RRA) tower station, to the EMS Dongyoksang tower station operating at 75 GHz over a 100-m path length, and between Incheon, RRA tower station to Khumdang, Korea Telecom (KT) tower station, operating at 18 and 38 GHz over a 3.2-km path length. The three-year rainfall and received signal level data measurements over these paths were used to determine rain attenuation distributions at different percentages of exceedance time distribution. Additionally, three existing attenuation models, ITU-R 530.17, Lin, and Revised Silva Mello (RSM) models were compared with measured rain attenuation. Our results indicate that these models did not correspond with measured results. Therefore, in this research, we proposed a supervised learning-based attenuation prediction method, which provides better performance than existing models. Furthermore, we validated our proposed model with measured received-signal level and rainfall data at the above-mentioned operating frequencies.
机译:在第四个工业革命的崛起中,人工智能(AI)以及诸如毫米波(MM-Waves)的关键能够实现技术可用于推出第五代(5G)和超出通信链路。然而,较高频带处的无线电链路的质量受到大气元件的限制。其中,降雨是毫在波段的主要传播损害,需要在链接预算规划期间考虑。在这项研究中,我们调查了在<内联公式XMLNS:MML =“http://www.w3.org/1998/math中的实验数据,现有模型和提议的监督人工神经网络(Sann)获得的雨衰减结果。 / mathml“xmlns:xlink =”http://www.w3.org/1999/xlink“> $ k $ ,<内联XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ ka $ ,和<内联公式xmlns:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink = “http://www.w3.org/1999/xlink”> $ E $ -Band,用于地面链接韩国。衡量运动在仁川,国家无线电研究机构(RRA)塔站,EMS东岩王塔站,以100米的路径长度为75 GHz,以及仁川,RRA Tower Station至Khumdang,韩国电信(KT)塔楼,在3.2公里的路径长度上以18和38 GHz工作。这些路径上的三年降雨量和接收信号电平数据测量用于确定超时时间分布的不同百分比下的雨衰减分布。此外,与测量的雨衰减进行了比较了三种现有的衰减模型,ITU-R 530.17,LIN和修订的Silva Mello(RSM)模型。我们的结果表明,这些模型与测量结果没有对应。因此,在本研究中,我们提出了一种受监督的基于学习的衰减预测方法,它提供比现有模型更好的性能。此外,我们通过上述操作频率测量的接收信号电平和降雨数据验证了我们提出的模型。

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