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The intelligent system for assessing the technical condition a transformer substation of 35/6(10) Kv

https://doi.org/10.30724/1998-9903-2022-24-2-24-35

Abstract

THE PURPOSE. The purpose of this work is to create an intelligent system for assessing the technical condition of a 35/6 (10) kV transformer substation, which will monitor the state of parameters in real time and evaluate the technical condition of the transformer substation equipment.

METHODS. The method of online assessment of the technical condition of a transformer substation is based on the determination of an integral indicator of the technical condition of the equipment, and the method of paired comparisons is also used. When making decisions in system analysis, the decomposition method is used.

RESULTS. The structure of the intellectual system is considered. The software part of this system has been created, which calculates the coefficients of express analysis of transformer substation equipment in real time.

CONCLUSION. The developed intelligent system allows for remote monitoring, reducing the likelihood of emergencies, monitoring the condition of existing equipment, predicting changes in the technical condition and proceeding to the organization of maintenance and repair of the main power equipment according to the actual condition.

About the Authors

I. V. Ivshin
Kazan State Power Engineering University
Russian Federation

Igor V. Ivshin



A. R. Galyautdinova
Kazan State Power Engineering University
Russian Federation

Alsu R. Galyautdinova



O. V. Vladimirov
Kazan State Power Engineering University
Russian Federation

Oleg V. Vladimirov



M. F. Nizamiev
Kazan State Power Engineering University
Russian Federation

Marat F. Nizamiev



E. N. Karpov
Kazan Law Institute of the Ministry of Internal Affairs of Russia
Russian Federation

Evgeny N. Karpov



E. P. Melnik
Kazan Law Institute of the Ministry of Internal Affairs of Russia
Russian Federation


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Review

For citations:


Ivshin I.V., Galyautdinova A.R., Vladimirov O.V., Nizamiev M.F., Karpov E.N., Melnik E.P. The intelligent system for assessing the technical condition a transformer substation of 35/6(10) Kv. Power engineering: research, equipment, technology. 2022;24(2):24-35. (In Russ.) https://doi.org/10.30724/1998-9903-2022-24-2-24-35

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ISSN 1998-9903 (Print)
ISSN 2658-5456 (Online)