Analysis of atmospheric temperature data by 4D spatial–temporal statistical model

Abstract The meteorological data such as temperature of the upper atmosphere is ssential for accurate weather forecasting. The Universal Rawinsonde Observation Program (RAOB) establishes an extensive radiosonde network worldwide to observe atmospheric meteorological data from the surface to the low...

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Main Authors: Ke Xu, Yaqiong Wang
Format: Article
Language:English
Published: Nature Publishing Group 2021-09-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-98125-2
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spelling doaj-79add7a6286a48c4a7f04fab8b545d092021-09-26T11:28:42ZengNature Publishing GroupScientific Reports2045-23222021-09-011111910.1038/s41598-021-98125-2Analysis of atmospheric temperature data by 4D spatial–temporal statistical modelKe Xu0Yaqiong Wang1School of Statistics, University of International Business and EconomicsGuanghua School of Management, Peking UniversityAbstract The meteorological data such as temperature of the upper atmosphere is ssential for accurate weather forecasting. The Universal Rawinsonde Observation Program (RAOB) establishes an extensive radiosonde network worldwide to observe atmospheric meteorological data from the surface to the low stratosphere. The RAOB data data has very high accuracy but can offer a very limited spatial coverage. Meanwhile, ERA-Interim reanalysis data is widely available but with low-quality. We propose a 4D spatiotemporal statistical model which can make effective inferences from ERA-Interim reanalysis data to RAOB data. Finally, we can obtain a huge amount of RAOB data with high-quality and can offer a very wide spatial coverage. In empirical research, we collected data from 200 launch sites around the world in January 2015. The 4D spatiotemporal statistical model successfully analyzed the observation gaps at different pressure levels.https://doi.org/10.1038/s41598-021-98125-2
collection DOAJ
language English
format Article
sources DOAJ
author Ke Xu
Yaqiong Wang
spellingShingle Ke Xu
Yaqiong Wang
Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
Scientific Reports
author_facet Ke Xu
Yaqiong Wang
author_sort Ke Xu
title Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
title_short Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
title_full Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
title_fullStr Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
title_full_unstemmed Analysis of atmospheric temperature data by 4D spatial–temporal statistical model
title_sort analysis of atmospheric temperature data by 4d spatial–temporal statistical model
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-09-01
description Abstract The meteorological data such as temperature of the upper atmosphere is ssential for accurate weather forecasting. The Universal Rawinsonde Observation Program (RAOB) establishes an extensive radiosonde network worldwide to observe atmospheric meteorological data from the surface to the low stratosphere. The RAOB data data has very high accuracy but can offer a very limited spatial coverage. Meanwhile, ERA-Interim reanalysis data is widely available but with low-quality. We propose a 4D spatiotemporal statistical model which can make effective inferences from ERA-Interim reanalysis data to RAOB data. Finally, we can obtain a huge amount of RAOB data with high-quality and can offer a very wide spatial coverage. In empirical research, we collected data from 200 launch sites around the world in January 2015. The 4D spatiotemporal statistical model successfully analyzed the observation gaps at different pressure levels.
url https://doi.org/10.1038/s41598-021-98125-2
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