THE ELECTRONIC SCIENTIFIC JOURNAL "YOUNG SCIENCE OF SIBERIA"

GEOCLIMATIC DATA PROCESSING TECHNOLOGY FOR THE FORMATION OF SPATIALLY DISTRIBUTED PREDICTIVE ESTIMATES OF THE STATE OF THE ATMOSPHERE

Receipt date: 
12.05.2021
Bibliographic description of the article: 

Petruhina V.A., Abasova N. I., Berdnikov V.M. Tehnologiya obrabotki geoklimaticheskyh dannyh dlya formirovaniya prostranstvenno-raspredelennih prognosticheskih otsenok sostoyaniya atmosfery [Geoclimatic data processing technology for the formation of spatially distributed predictive estimates of the state of the atmosphere]. Molodaya nauka Sibiri: ehlektronnyj nauchnyj zhurnal [Young science of Siberia: electronic scientific journal], 2021, no. 2. [Accessed 23/06/21]

Year: 
2021
Journal number: 
УДК: 
004.67
Article File: 
Abstract: 

The problem of predicting climate change and its impact on humans is quite important and relevant in recent times. For a long time, mechanisms and methods for predicting the behavior of the climate in various regions and regions of our planet have been developed. Due to climate change, aggressive human impact on nature, and other various factors, the methods developed in the mid-twentieth century are becoming ineffective, and it is time-consuming but feasible to calculate using several methods. The article considers the technology of processing geoclimatic data, which is used to form spatially distributed predictive estimates of the state of the atmosphere.

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