Spectral Analysis in Automated Information Systems
- Autores: Starostin A.S.1, Artemyev V.S.2
-
Afiliações:
- Russian Customs Academy
- Plekhanov Russian University of Economics
- Edição: Volume 12, Nº 1 (2025)
- Páginas: 69-78
- Seção: INFORMATION TECHNOLOGY AND TELECOMMUNICATION
- URL: https://journals.eco-vector.com/2313-223X/article/view/679147
- DOI: https://doi.org/10.33693/2313-223X-2025-12-1-69-78
- EDN: https://elibrary.ru/MIFKSY
- ID: 679147
Citar
Texto integral



Resumo
This article discusses methods of spectral analysis and application in automated information systems, in the frequency domain using the Fourier transform. The authors have developed mathematical models that allow formalizing control and information processing problems in applied areas. The study of the equations proves that the shift of the system in time and the subsequent application of the Fourier transform allows to simplify the analysis of processes and find optimal control actions. The application of spectral methods has made it possible to efficiently find solutions to control problems, especially in the presence of constraints on the system parameters and requirements for the smoothness of the control signal. The obtained expressions demonstrate that the correct choice of the function ũ*(ω) taking into account its integrability on the whole frequency axis and finiteness of degree in a given interval allows to carry out accurate and effective control of the dynamic characteristics of the system. The analysis and obtained results show that taking into account these properties of the control function allow to minimize undesirable oscillations, providing smoothness of transient processes and exact compliance with the given boundary conditions. Algorithms of spectral data representation as signal filtering, algorithmic data transformation and time series analysis allowed the authors to highlight or remove certain frequencies in the signal. In existing automated data storage and processing systems, the use of spectral analysis helps to improve the speed of computation.
Palavras-chave
Texto integral

Sobre autores
Anatoly Starostin
Russian Customs Academy
Email: as.starostin@customs-academy.ru
Código SPIN: 3159-2912
Cand. Sci. (Eng.), Associate Professor, Acting Head of the Department of Applied Informatics
Rússia, LyubertsyVictor Artemyev
Plekhanov Russian University of Economics
Autor responsável pela correspondência
Email: Artemev.VS@rea.ru
ORCID ID: 0000-0002-0860-6328
Código SPIN: 8912-5825
Scopus Author ID: 58002154300
Senior Lecturer of the Department of Informatics
Rússia, MoscowBibliografia
- Akhmedov V.N., Akhmedov Kh.I. Synthesis and IR-spectral analysis of Thermostable substance based on liquid glass and silicagel. Universum: Chemistry and Biology. 2024. No. 12-2 (126). Pp. 68–71.
- Andreev V.G., Chan V.A. Parametric spectral analysis of piecewise stationary radio signals with changing correlation properties. Bulletin of Ryazan State Radio Engineering University. 2023. No. 83. Pp. 3–12. (In Rus.). doi: 10.21667/1995-4565-2023-83-3-12.
- Avdeev V.B., Katrusha A.N., Katrusha S.A. Spectral analysis of the scattered phase-modulated radiation at high-frequency irradiation of a dipole under the influence of an acoustic speech wave. Telecommunications. 2023. No. 9. Pp. 6–18. (In Rus.). doi: 10.31044/1684-2588-2023-0-9-6-18.
- Savchenko V.V. Savchenko V.V. Method of comparative testing of parametric estimates of the power spectrum: Spectral analysis through time series synthesis. Izmeritel’naya Tekhnika. 2023. No. 6. Pp. 56–62. (In Rus.). doi: 10.32446/0368-1025it.2023-6-56-62.
- Orlov A.I., Lutsenko E.V. Data, information and knowledge analysis in system fuzzy interval mathematics. Krasnodar: Kuban State Agrarian University named after I.T. Trubilin, 2022. 405 p. ISBN: 978-5-907550-62-9. doi: 10.13140/RG.2.2.2.15688.44802.
- Myasnikova N.V., Lysova N.V. Express method for determining the spectral composition of the signal based on the extreme filtering. Modeling, Optimization and Information Technologies. 2022. Vol. 10. No. 2 (37). (In Rus.). doi: 10.26102/2310-6018/2022.37.2.027.
- Semenova E.G., Smirnova M.S., Ivakin Y.A. Ways of using deep neural network technology in solving the problem of classifying an object detected by a hydroacoustic device. Automation in Industry. 2023. No. 2. Pp. 45–48. (In Rus.). doi: 10.25728/avtprom.2023.02.09.
- Smirnov N.N., Kuznetsov A.S. Formalization of data processing processes of the Internet of Things devices in the information monitoring systems on the basis of structural system analysis. International Research Journal. 2024. No. 7 (145). (In Rus.). doi: 10.60797/IRJ.2024.145.89.
- Mokrova N.V., Grigoriev A.O., Artemyev V.S. Synthesis of finite control in agroindustrial complex under conditions of impulse loads. Vestnik of Chuvash State Agrarian University. 2024. No. 3 (30). Pp. 189–197. (In Rus.). doi: 10.48612/vch/3t59-rm1b-2mte.
- Artemyev V., Mokrova N., Hajiyev A. Theoretical and practical aspects of the application of the dynamic programming method in optimal control problems. Machine Science. 2024. Vol. 13. No. 1. Pp. 46–57. doi: 10.61413/GIPV6858.
- Medvedev A.V., Medvedev A.A., Shuchkov M.D. Concept of food management using RFID technology: Minimizing losses and increasing consumer awareness. Computational Nanotechnology. 2024. Vol. 11. No. 1. Pp. 85–93. (In Rus.). doi: 10.33693/2313-223X-2024-11-1-85-93. EDN: DXHSQM.
- Yangirov A.I. To the issue of assessing the security of operating systems used in automated information systems of internal affairs bodies. Protection, Security, Communication. 2023. No. 8-3. Pp. 83–90. (In Rus.)
Arquivos suplementares
