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Rain Attenuation Prediction Using Artificial Neural Network for Dynamic Rain Fade Mitigation

机译:基于人工神经网络的降雨衰减预测

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Atmospheric processes from which rainfall is formed are complex and cannot be accurately predicted using mathematical or statistical models. In this paper, the backpropagation neural network (BPNN) is trained to predict rainfall rates, and hence attenuation that is likely to be experienced on a link. This study is carried out over the sub-tropical region of Durban, South Africa (29.8587°S, 31.0218°E). Utilizing the non-linear mapping capability between inputs and outputs, the backpropagation neural network is trained using rainfall data collected from 2013 to 2016 to predict rainfall rates. Long-term rain attenuation statistics arising from predicted rain rates are compared with actual and ITU-R model, and results show a relatively small margin of error between predicted rain attenuation exceeded for 0.01 % of an average year. Furthermore, analysis of predicted and actual rain attenuation within individual rain events from different rainfall regimes was carried out and results show that the proposed model can be used to predict the state of the link. This is demonstrated when the trained BPNN was tested using unseen data that was collected from January 2017 to May 2018, a period that spans through all four different climatic seasons of summer, autumn, winter and spring. Results of the test show a correlation coefficient of 0.8298. Finally, the proposed rain prediction model was tested on rainfall data from Butare, Rwanda (2.6078°S, 29.7368°E), which is a tropical region and results obtained indicate the portability of the proposed model to other regions.
机译:形成降雨的大气过程很复杂,无法使用数学或统计模型准确预测。在本文中,对反向传播神经网络(BPNN)进行了训练,以预测降雨率,从而预测链路上可能会经历的衰减。这项研究是在南非德班(29.8587°S,31.0218°E)的亚热带地区进行的。利用输入和输出之间的非线性映射功能,使用从2013年到2016年收集的降雨数据来训练反向传播神经网络,以预测降雨率。将预测的降雨率产生的长期降雨衰减统计数据与实际模型和ITU-R模型进行比较,结果表明,在平均年均0.01%的范围内,预测的降雨衰减之间的误差幅度相对较小。此外,对来自不同降雨方式的单个降雨事件中的预测降雨衰减和实际降雨衰减进行了分析,结果表明所提出的模型可用于预测链接状态。当使用从2017年1月至2018年5月收集的看不见的数据对经过训练的BPNN进行测试时就证明了这一点,该数据跨越了夏季,秋季,冬季和春季的所有四个不同气候季节。测试结果显示相关系数为0.8298。最后,在热带地区卢旺达的布塔雷(2.6078°S,29.7368°E)的降雨数据上对提出的降雨预测模型进行了测试,所得结果表明该模型可移植到其他地区。

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