使用GOES-16和CloudSat数据的标记云类型数据集

Paula V. Romero Jure, S. Masuelli, J. Cabral
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引用次数: 0

摘要

本文介绍了由GOES-16地球同步卫星上的高级基线成像仪(ABI)的91个多波段云和湿度产品全磁盘(MCMIPF)和CloudSat极轨卫星的91个时间和空间对应的CLDCLASS产品组成的数据集的开发。这些产品是昼夜的,对应于2019年1月和2月,选择这些产品是为了让两颗卫星的产品可以同时位于南美洲上空。CLDCLASS产品提供了轨道每一步观测到的云类型,GOES-16多波段图像包含可以与这些数据共存的像素。我们开发了一种算法,该算法以表的形式返回产品,该表提供多波段图像中的像素,并标记了其中观察到的云的类型。这些符合这种特殊结构的标记数据对于执行监督学习非常有用。基于Gorooh等人(2020)的工作,训练了一个简单的线性人工神经网络,得到了很好的结果,特别是对深对流云[1]的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A labeled dataset of cloud types using data from GOES-16 and CloudSat
In this paper we present the development of a dataset consisting of 91 Multi-band Cloud and Moisture Product Full-Disk (MCMIPF) from the Advanced Baseline Imager (ABI) on board GOES-16 geostationary satellite with 91 temporally and spatially corresponding CLDCLASS products from the CloudSat polar satellite. The products are diurnal, corresponding to the months of January and February 2019 and were chosen such that the products from both satellites can be co-located over South America. The CLDCLASS product provides the cloud type observed for each of the orbit’s steps and the GOES-16 multiband images contain pixels that can be co-located with these data. We develop an algorithm that returns a product in the form of a table that provides pixels from multiband images labeled with the type of cloud observed in them. These labeled data conformed in this particular structure are very useful to perform supervised learning. This was corroborated by training a simple linear artificial neural network based on the work of Gorooh et al. (2020), which gave good results especially for the classification of deep convective clouds [1].
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