利用神经网络设计南非卫星通信链路的雨损模型

A. O. Ayo, P. Owolawi, J. Ojo, L. J. Mpoporo
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引用次数: 2

摘要

近几十年来,雨水干扰被认为是微波传播的主要干扰因素,特别是在10ghz以上的频率。对流层的损害造成了更大的损失,特别是在热带和赤道地区,由于该地区的高降雨强度。除了雨水衰减,影响卫星链路的其他传播障碍包括气体吸收、云衰减和雨水衰减。这些缺陷通常给地面和地星微波链路的设计带来一些挑战。在本研究中,使用南非选定地点的12年(1994-2006年)降雨率数据,研究了12 GHz以上地面到卫星连线频率的降雨衰减预测。使用的预测方法是基于机器学习ann(人工神经网络),使用降雨率和超过百分比作为输入数据,作为预测南非高频卫星链路上降雨驱动衰减的工具。本研究的目的是比较不同的模型,对地空通信链路(ESCL)的雨衰减数据进行实时预报。与ITU-R和Moupfouma模型相比,所提出的模型在ka下行链路频带上取得了令人信服的良好结果。获得的结果将作为南非基于卫星的数字传输系统的良好工具
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rain Impairment Model for Satellite Communication Link Design in South Africa using Neural Network
Over some decades, rain impairment has been considered as the major dominant impairment in microwave propagation especially at frequencies above 10 GHz. Tropospheric impairment gives rise to higher amount of loss, especially in the tropical and equatorial regions due to the high rain intensity in the region. Aside rain attenuation, other propagation impairments that affect satellite links include gaseous absorption, cloud attenuation and rain fade. These impairments usually posed some challenges in designing terrestrial and earth to satellite microwave links. In this study, the prediction of rain attenuation at frequencies above 12 GHz for line of sight earth to satellite links is investigated using 12 years (1994–2006) rain rate data for selected locations in South Africa. The prediction method use is based on machine learning ANNs (artificial neural networks) using rain rate and exceedance percentage as input data as a tool to predict rain-driven attenuation on the higher frequency satellite links in South Africa. This research aims to compare different models and make real time forecasting of rain attenuation data for earth-to space communication links (ESCL). The proposed model creditably observes good results for the Ka-down link frequency band in contrast to the ITU-R and Moupfouma models. The Results obtained will serves as a good tool for satellite-based digital transmission systems in South Africa
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