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Justification of the Architecture a Promising Automated System for Monitoring Radiation, Chemical and Biological Environment Using Artificial Intelligence

https://doi.org/10.35825/2587-5728-2024-8-1-65-77

Abstract

The most progressive direction for identifying and assessing the chemical warfare situation is the introduction of technologies based on artificial intelligence. The goal of the work is to develop the architecture of a promising system for monitoring the radiation, chemical and biological situation using artificial intelligence. Research information base. Publications on the use of mathematical models in artificial intelligence (AI), available via the Internet. The research method is analytical, from general to specific. We considered the features of using artificial intelligence in automated control systems. Results and discussion. Confrontations with Ukraine and NATO are multivariate and spatial in nature, and require constant monitoring in the face of a lack of specific information about attacks being prepared and already carried out. The use of AI technologies will allow us to go beyond simply displaying the current situation, providing tools for predicting the development of events. The proposed architecture of a promising system involves the creation of a single database filled with verified information from open sources. The developed structure of the web application, which is an interactive interface for analyzing and responding to changes in the chemical warfare situation, will allow flexible switching between information layers and obtaining data in real time. Conclusion. The use of neural network technologies by NBC protection troops will make it possible to search according to specified parameters and conduct retrospective data analysis, which will significantly simplify monitoring of NBC threats for the troops and population of the Russian Federation.

About the Authors

S. A. Sharov
Federal State Budgetary Institution «33 Central Research Testing Institute» of the Ministry of Defense of the Russian Federation
Russian Federation

Sergey A. Sharov. Head of Department, Cand. Sci. (Chem.)

412918, v. Shikhany-2, st. Krasnoznamenaya, 1



D. S. Batinov
Federal State Budgetary Institution «33 Central Research Testing Institute» of the Ministry of Defense of the Russian Federation
Russian Federation

Dmitrii S. Badinov. Junior scientific worker

412918, v. Shikhany-2, st. Krasnoznamenaya, 1



M. A. Osipov
Federal State Treasury Military Educational Institution of Higher Education «Military Academy of Radiation, Chemical and Biological Defense named after Marshal of the Soviet Union S.K. Timoshenko» Ministry of Defense of the Russian Federation
Russian Federation

Mikhail A. Osipov. Doctoral student, Cand. Sci. (Techn.)

156015, Kostroma, st. Gorkogo, 16



M. V. Domnin
Federal State Treasury Military Educational Institution of Higher Education «Military Academy of Radiation, Chemical and Biological Defense named after Marshal of the Soviet Union S.K. Timoshenko» Ministry of Defense of the Russian Federation
Russian Federation

Mikhail V. Domnin. Course officer-teacher

156015, Kostroma, st. Gorkogo, 16



S. A. Morozov
Federal State Treasury Military Educational Institution of Higher Education «Military Academy of Radiation, Chemical and Biological Defense named after Marshal of the Soviet Union S.K. Timoshenko» Ministry of Defense of the Russian Federation
Russian Federation

Sergey A. Morozov. Head of the Department, Cand. Sci. (Ped.), Professor

156015, Kostroma, st. Gorkogo, 16



M. A. Golyshev
Federal State Budgetary Institution «27 Scientific Center Named after Academician N.D. Zelinsky» Ministry of Defense of the Russian Federation
Russian Federation

Maxim A. Golyshev. Deputy Head of Department, Cand. Sci. (Chem.)

111024, Moscow, Entuziastov Proezd, 19



Yu. I. Khripkov
Federal State Budgetary Institution «27 Scientific Center Named after Academician N.D. Zelinsky» Ministry of Defense of the Russian Federation
Russian Federation

Yuri I. Khripkov. Leading researcher, Dr. Sci. (Techn.), Associate Professor

111024, Moscow, Entuziastov Proezd, 19



A. V. Nadein
Federal State Budgetary Institution «27 Scientific Center Named after Academician N.D. Zelinsky» Ministry of Defense of the Russian Federation
Russian Federation

Aleksey V. Nadein. Scientific employee, Cand. Sci. (Techn.)

111024, Moscow, Entuziastov Proezd, 19



I. V. Chebykin
The Military unit 29753
Russian Federation

Ilya V. Chebykin. Head of the calculation and analytical group

412918, v. Shikhany-2, St. Krasnoznamenaya, 2



V. D. Vasin
The Military Unit 71432
Russian Federation

Vasily D. Vasin. Senior Assistant to the head of the combat training department

412918, Shikhany-2, St. Krasnoznamenaya, 4



M. M. Bets
The Military Unit 19889
Russian Federation

Mihail M. Bek. The commander of the training platoon

142438, Moscow region, Noginsky district, Bolshoye Bunkovo village



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Review

For citations:


Sharov S.A., Batinov D.S., Osipov M.A., Domnin M.V., Morozov S.A., Golyshev M.A., Khripkov Yu.I., Nadein A.V., Chebykin I.V., Vasin V.D., Bets M.M. Justification of the Architecture a Promising Automated System for Monitoring Radiation, Chemical and Biological Environment Using Artificial Intelligence. Journal of NBC Protection Corps. 2024;8(1):65-77. (In Russ.) https://doi.org/10.35825/2587-5728-2024-8-1-65-77

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ISSN 2587-5728 (Print)
ISSN 3034-2791 (Online)