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Wet-Dry Classification Using LSTM and Commercial Microwave Links

机译:使用LSTM和商用微波链路的干法分类

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The task of rain detection, or wet-dry classification using measurements from commercial microwave links (CMLs) is a subject that been studied in depth. However, these studies are based on direct measurement of the signal level, which is known to be attenuated by rain. In this paper we present, for the first time an empirical study on rain classification using records of transmissions errors in the CMLs. Based on a dataset of measurements taken from operational cellular backhaul networks and meteorological measurements, and using long short-term memory (LSTM) units with a multi-variable time series, we demonstrate that measurements of microwave link error are related to rain and can even be used for rain detection (wet-dry classification). We evaluate the performance of LSTM on CMLs empirically, and analyze the results by comparison with rain detection based on attenuation measurements in the same links.
机译:使用商业微波链路(CML)的测量来进行雨水检测或干法分类的任务是一个已深入研究的主题。但是,这些研究是基于信号电平的直接测量,已知该信号电平会被雨水衰减。在本文中,我们首次使用CML中的传输误差记录对降雨分类进行了实证研究。基于从运营的蜂窝回传网络和气象测量中获得的测量数据集,并使用具有多变量时间序列的长短期记忆(LSTM)单位,我们证明了微波链路误差的测量与降雨有关,甚至可以用于雨水检测(干法分类)。我们根据经验评估LSTM在CML上的性能,并通过与基于相同链路衰减测量的雨水检测进行比较来分析结果。

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