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Learning-Based Rainfall Estimation via Communication Satellite Links

机译:通过通信卫星链路进行基于学习的降雨估算

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We present a method for estimating rainfall by opportunistic use of Ka-band satellite communication network. Our approach is based on the attenuation of the satellite link signal in the rain medium and exploits the nearly linear relation between the rain rate and the specific attenuation at Ka-band frequencies. Although our experimental setup is not intended to achieve high resolutions as millimeter wavelength weather radars, it is instructive because of easy availability of millions of satellite ground terminals throughout the world. The received signal is obtained over a passive link. Therefore, traditional weather radar signal processing to derive parameters for rainfall estimation algorithms is not feasible here. We overcome this disadvantage by employing neural network learning algorithms to extract relevant information. Initial results reveal that rainfall accumulations obtained through our method are 85% closer to the in situ rain gauge estimates than the nearest C-band German weather service Deutscher Wetterdienst (DWD) radar.
机译:我们提出了一种通过机会使用Ka波段卫星通信网络来估计降雨量的方法。我们的方法基于降雨介质中卫星链路信号的衰减,并利用降雨率与Ka频段频率下的特定衰减之间的近似线性关系。尽管我们的实验装置并非旨在实现毫米波长气象雷达的高分辨率,但它具有启发性,因为在全球范围内数百万个卫星地面终端的可用性很高。接收到的信号是通过无源链路获得的。因此,传统的天气雷达信号处理来推导用于降雨估计算法的参数在这里是不可行的。通过采用神经网络学习算法来提取相关信息,我们克服了这一缺点。初步结果表明,与最近的C波段德国气象服务Deutscher Wetterdienst(DWD)雷达相比,通过我们的方法获得的降雨累积量更接近实地雨量计的估计值85%。

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