УДК 519.6:528.9:551.435.16
https://doi.org/10.47148/1609-364X-2025-4-81-89
Anatoly F. Chuldum
Researcher
Tuvinian Institute for Exploration of Natural Resources SB RAS
117a, Internatsionalnaya Str., Kyzyl, 667007, Russia
е-mail: tajkinol@gmail.com
ORCID: 0000-0003-2771-3863
Researcher ID: A-3489-2014
SPIN-code: 9253-9560
AuthorID: 159601
Svetlana A. Chupikova
Candidate of Geographic Sciences, Senior Researcher
Tuvinian Institute for Exploration of Natural Resources SB RAS
117a, Internatsionalnaya Str., Kyzyl, 667007, Russia
е-mail: s_fom@inbox.ru
ORCID ID: 0000-0002-7904-5847
ResearcherID: R-6738-2016
Scopus ID: 57194128480
SPIN-code: 8367-9071
AuthorID: 160182
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Key words: hydrological forecasts; time series; satellite data; regression methods; forecasts of water levels