Rain Events Detection using Energy Variation of Commercial Microwave Links Attenuation

W. Ouedraogo, Moumouni Djibo, A. Doumounia, Serge Roland Sanou, Moumouni Sawadogo, Idrissa Guira, F. Zougmore
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引用次数: 1

Abstract

: In this study, we propose a new method for detecting wet periods by using telecommunications Commercial Microwave Links (CML). The purpose of the study is to automatically find rain time slots. The attenuation of the microwave signal, propagating between a transmitting antenna and a receiving one, due to the variations of the climatic conditions over the link, is a non-stationary signal. When a rain event occurs over a CML, the attenuation signal level increases proportionally to the rain amount. This level decreases again at the end of the rain. These abrupt variations are exploited here to detect rainy time slots. The proposed method consists in splitting the attenuation signal into frames and computing the variation of the energy between consecutive frames. To determine whether the current frame corresponds to a wet period, the proposed method, named Energy Variation (EVA), compares the variation of the energy with a given threshold, while taking into account the status of the previous frame. Simulation results from real attenuation data of the mobile phone operator Telecel Faso SA (Burkina Faso) show that the proposed method allows the detection of 84.61% of rainy events. The Matthews Correlation Coefficient (MCC) is higher than 0.9, which demonstrates that EVA can discriminate between wet and dry periods with high accuracy.
基于商用微波链路衰减能量变化的雨事件检测
在这项研究中,我们提出了一种利用电信商业微波链路(CML)检测湿期的新方法。这项研究的目的是自动找到降雨时段。微波信号在发射天线和接收天线之间传播时,由于链路上气候条件的变化而产生的衰减是非平稳信号。当降雨事件发生在CML上时,衰减信号电平与降雨量成比例地增加。降雨结束后,水位再次下降。这些突变在这里被用来探测雨季。该方法将衰减信号分割成帧,计算连续帧之间的能量变化。为了确定当前帧是否对应于潮湿时期,所提出的方法,称为能量变化(EVA),将能量变化与给定阈值进行比较,同时考虑到前一帧的状态。对布基纳法索移动电话运营商Telecel Faso (Burkina Faso)的真实衰减数据进行仿真,结果表明,该方法对降雨事件的检测准确率为84.61%。马修斯相关系数(MCC)大于0.9,表明EVA能够较准确地区分干湿期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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