Finding the Optimal Machine Learning Model for Flood Prediction on the Amur River
- Autores: Aleksandrov N.E.1, Ermakov D.N.1,2, Aziz N.M.1, Kazenkov O.Y.1,2,3
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Afiliações:
- Engineering Academy of the Peoples’ Friendship University (RUDN University)
- Research Institute “Polyus” named after M.F. Stelmakh
- K.G. Razumovsky Moscow State University of Tehnologies and Management (the First Cossack University)
- Edição: Volume 9, Nº 2 (2022)
- Páginas: 11-20
- Seção: Articles
- URL: https://journals.eco-vector.com/2313-223X/article/view/529845
- DOI: https://doi.org/10.33693/2313-223X-2022-9-2-11-20
- ID: 529845
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Sobre autores
Nikita Aleksandrov
Engineering Academy of the Peoples’ Friendship University (RUDN University)
Email: 1042210208@pfur.ru
PhD Student Moscow, Russian Federation
Dmitrii Ermakov
Engineering Academy of the Peoples’ Friendship University (RUDN University); Research Institute “Polyus” named after M.F. Stelmakh
Email: dermakow@mail.ru
Dr. Sci. (Polit.), Dr. Sci. (Econ.), Cand. Sci. (Hist.), Professor, Master of Engineering; Professor at the Department of Innovation Management in Industries; leading researcher Moscow, Russian Federation
Naofal Aziz
Engineering Academy of the Peoples’ Friendship University (RUDN University)
Email: 1042208064@rudn.ru
PhD Student Moscow, Russian Federation
Oleg Kazenkov
Engineering Academy of the Peoples’ Friendship University (RUDN University); Research Institute “Polyus” named after M.F. Stelmakh; K.G. Razumovsky Moscow State University of Tehnologies and Management (the First Cossack University)
Email: o.kazenkov@gmail.com
Honorary Worker of the Sphere of Education of the Russian Federation; assistant at the Department of Nanotechnology and Microsystem Technology; researcher at the Department for Research Activities; deputy Head Moscow, Russian Federation
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