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Intelligent system for analysis of energy loss for ac traction networks for database updating

https://doi.org/10.46973/0201-727X_2024_1_176

Abstract

   The paper considers methodology for creating intelligent systems for analyzing energy losses in traction networks including goals, objectives, functional composition, structure, as well as information bases of the intelligent system. The directions of research on optimization of power consumption modes, the structure of databases and knowledge bases are highlighted. In order of the developed intelligent system, the problem of assessing energy losses in traction networks and transformers and the efficiency of the train traction power supply system was studied. Factors influencing the components of power consumption have been identified, generalizing dependences of energy losses have been obtained for inclusion in the knowledge bases of expert systems.

About the Author

V. V. Domansky
Rostov State Transport University (RSTU)
Russian Federation

Vasily Valerievich Domansky, Candidate of Engineering Sciences, Associate Professor

Chair «Computer Science»

Rostov-on-Don



References

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Review

For citations:


Domansky V.V. Intelligent system for analysis of energy loss for ac traction networks for database updating. Vestnik Rostovskogo Gosudarstvennogo Universiteta Putej Soobshcheniya. 2024;(1):176-185. (In Russ.) https://doi.org/10.46973/0201-727X_2024_1_176

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