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Инд. авторы: Ryazanova A.A., Okladnikov I.G., Gordov E.P.
Заглавие: Integration of modern statistical tools for the analysis of climate extremes into the web-GIS "CLIMATE"
Библ. ссылка: Ryazanova A.A., Okladnikov I.G., Gordov E.P. Integration of modern statistical tools for the analysis of climate extremes into the web-GIS "CLIMATE" // IOP Conference Series: Earth and Environmental Science. - 2017. - Vol.96. - Iss. 1. - Art.012014. - ISSN 1755-1307. - EISSN 1755-1315.
Внешние системы: DOI: 10.1088/1755-1315/96/1/012014; РИНЦ: 35492455; SCOPUS: 2-s2.0-85038076829; WoS: 000426729700014;
Реферат: eng: The frequency of occurrence and magnitude of precipitation and temperature extreme events show positive trends in several geographical regions. These events must be analyzed and studied in order to better understand their impact on the environment, predict their occurrences, and mitigate their effects. For this purpose, we augmented web-GIS called 'CLIMATE' to include a dedicated statistical package developed in the R language. The web-GIS 'CLIMATE' is a software platform for cloud storage processing and visualization of distributed archives of spatial datasets. It is based on a combined use of web and GIS technologies with reliable procedures for searching, extracting, processing, and visualizing the spatial data archives. The system provides a set of thematic online tools for the complex analysis of current and future climate changes and their effects on the environment. The package includes new powerful methods of time-dependent statistics of extremes, quantile regression and copula approach for the detailed analysis of various climate extreme events. Specifically, the very promising copula approach allows obtaining the structural connections between the extremes and the various environmental characteristics. The new statistical methods integrated into the web-GIS 'CLIMATE' can significantly facilitate and accelerate the complex analysis of climate extremes using only a desktop PC connected to the Internet. © Published under licence by IOP Publishing Ltd.
Ключевые слова: Temperature extremes; Structural connections; Statistics of extremes; Statistical packages; Quantile regression; Impact on the environment; Environmental characteristic; Statistical mechanics; Geographical regions; Environmental technology; Environmental engineering; Digital storage; Climate change; Analysis of various; Geographic information systems;
Издано: 2017
Физ. характеристика: 012014
Конференция: Название: 8th International Conference on Computational Information Technologies for Environmental Sciences
Аббревиатура: CITES 2017
Город: Zvenigorod
Страна: Russia
Даты проведения: 2017-09-04 - 2017-09-07
Цитирование:
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