Istrazivanja i projektovanja za privreduJournal of Applied Engineering Science

THE USE OF RADAR TECHNOLOGIES IN THE HYDRAULIC ENGINEERing IN SEISMIC ZONES


DOI: 10.5937/jaes0-30937 
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Creative Commons License

Volume 19 article 884 pages: 1040-1048

Zhanar O. Oralbekova*
L.N. Gumilyov Eurasian National University, Department of Computer and Software Engineering,Nur-Sultan, Republic of Kazakhstan

Gulnur A. Tyulepberdinova
Al-Farabi Kazakh National University, Department of Informatics, Almaty, Republic of Kazakhstan

Gulnur G. Gaziz
Al-Farabi Kazakh National University, Department of Informatics, Almaty, Republic of Kazakhstan

Aigul D. Adamova
S. Seifullin Kazakh Agrotechnical University, Department of Computing Engineering and Software, Nur-Sultan, Republic of Kazakhstan

Bakytgerey B. Sholpanbaev
Abai Kazakh National Pedagogical University, Institute of Mathematics, Physics and Informatics, Almaty, Republic of Kazakhstan

Hydraulic structures are designed in a standard way if it is necessary to regulate the water course and maintain the volume of irrigation. The obstacles to the construction of such structures are mainly technical and economic, when instead of building a new hydraulic complex, it is gradually modernised. Consideration of the issues of creating complexes of hydraulic structures leads to the statement of a fact that the water balance of the territory changes. The novelty of the study is determined by the fact that hydraulic structures can be used as prerequisites for the development of qualitatively new programmes for runoff regulation. The authors note that this is particularly important for seismologically unstable areas. It is necessary to lay out plans taking into account not only the possible seismological load, but also the modes and technologies that are used to modernise the already operating hydraulic structures. The practical significance of the study is determined by the fact that the development of hydrotechnical complexes makes it possible to create a system not only for improving the quality of the water balance, but also performs technological support for the safety of the technologies used.

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The authors express their deep gratitude to Prof., Dr. A. Berdyshev and PhD N. Akhtaeva for advice on experimental research. The work supported by the Ministry of Education and Science of the Republic of Kazakhstan, under the Grant No. 132, 12 March 2018 (IRN: AP05133922).

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