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http://dx.doi.org/10.17661/jkiiect.2021.14.5.349

A Survey of Weather Forecasting Software and Installation of Low Resolution of the GloSea6 Software  

Chung, Sung-Wook (Department of Computer Engineering, Changwon National University)
Lee, Chang-Hyun (Department of Computer Engineering, Changwon National University)
Jeong, Dong-Min (Department of Computer Engineering, Changwon National University)
Yeom, Gi-Hun (Department of Computer Engineering, Changwon National University)
Publication Information
The Journal of Korea Institute of Information, Electronics, and Communication Technology / v.14, no.5, 2021 , pp. 349-361 More about this Journal
Abstract
With the development of technology and the advancement of weather forecasting models and prediction methods, higher performance weather forecasting software has been developed, and more precise and accurate weather forecasting is possible by performing software using supercomputers. In this paper, the weather forecast model used by six major countries is investigated and its characteristics are analyzed, and the Korea Meteorological Administration currently uses it in collaboration with the UK Meteorological Administration since 2012 and explains the GloSea However, the existing GloSea was conducted only on the Meteorological Administration supercomputer, making it difficult for various researchers to perform detailed research by specialized field. Therefore, this paper aims to establish a standard experimental environment in which the low-resolution version based on GloSea6 currently used in Korea can be used in local systems and test it to present the localization of low-resolution GloSea6 that can be performed in the laboratory environment. In other words, in this paper, the local portability of low-resolution Globe6 is verified by establishing a basic architecture consisting of a user terminal-calculation server-repository server and performing execution tests of the software.
Keywords
GloSea6; Localization; Low Resolution; Survey; Weather Forecasting Software;
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Times Cited By KSCI : 1  (Citation Analysis)
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