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Classification of particles in stratiform clouds using the 33 and 95 GHz polarimetric cloud profiling radar system (CPRS)

机译:使用33 GHz和95 GHz极化云分布雷达系统(CPRS)对层状云中的粒子进行分类

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摘要

This paper describes the identification of regions of ice, cloud droplets, rain, mixed-phase hydrometers, and insects in stratiform clouds using 33 and 95 GHz radar measurements of reflectivity, linear-depolarization ratio (LDR), dual-wavelength ratio, and velocity from a single-antenna radar system. First, the radar system, experiment, and data products are described. Then, regions are classified using a rule-based classifier derived primarily from LDR, velocity, and altitude. Next, a region-dependent attenuation-correction algorithm is developed to remove attenuation biases in the reflectivity estimate, and histograms of the corrected data are presented for each data product and class. The labeled regions and attenuation-corrected data are then used to train a neural net and maximum likelihood classifier. These agree with the rule-based classifier 96% and 94% of the time, respectively. Finally, the paper evaluates the importance of measuring dual-frequency parameters, velocity, and depolarization ratio.
机译:本文描述了使用33和95 GHz雷达对反射率,线性去极化比(LDR),双波长比和速度的雷达测量来识别层状云中冰,云滴,雨水,混合相比重计和昆虫的区域来自单天线雷达系统。首先,描述了雷达系统,实验和数据产品。然后,使用主要基于LDR,速度和海拔高度的基于规则的分类器对区域进行分类。接下来,开发了一种依赖于区域的衰减校正算法,以消除反射率估计中的衰减偏差,并针对每个数据产品和类别显示校正后的数据的直方图。然后将标记的区域和衰减校正后的数据用于训练神经网络和最大似然分类器。它们分别以96%和94%的时间与基于规则的分类器一致。最后,本文评估了测量双频参数,速度和去极化率的重要性。

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