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Journal Information-measuring and Control Systems №4 for 2022 г.
Article in number:
Optimization of the structure of information systems based on stochastic methods
Type of article: scientific article
DOI: https://doi.org/10.18127/j20700814-202204-04
UDC: 519.87
Authors:

S.A. Skachkov1, A.V. Klyuev2, I.L. Zhbanov3, A.V. Maximov4, G.A. Gabrielyan5, I.A. Isayeva6

1−3 Military Academy of the Armed Forces of the Russian Federation (Smolensk, Россия)

4 JSC Morinsis-Agat Concern (Moscow, Russia)

5−6 Institute of Information Technologies of RTU MIREA (Moscow, Russia)

Abstract:

The article discusses some aspects of the problem of creating highly reliable multifunctional information systems with reconfiguration of the structure in the conditions of different characteristics of hardware threats to reliability. The purpose of the work is to ensure the reliability of information systems at the stage of their operation by optimally redistributing available resources in the event of failures and sustained failures in the system. As a result, a comparative analysis was carried out and recommendations were given on the use of stochastic methods for optimizing the structure of an information system based on evolutionary algorithms and the classical Monte Carlo method.

Pages: 36-43
For citation

Skachkov S.A., Klyuev A.V., Zhbanov I.L., Maximov A.V., Gabrielyan G.A., Isayeva I.A. Optimization of the structure of information systems based on stochastic methods. Information-measuring and Control Systems. 2022. V. 20. № 4. P. 36−43. DOI: https://doi.org/10.18127/j20700814-202204-04 (in Russian)

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Date of receipt: 15.02.2022
Approved after review: 10.03.2022
Accepted for publication: 15.07.2022