Models, systems, networks in economics, engineering, nature and society
Background. The technical diagnostic tools used today in the repair and maintenance of asynchronous motors are an important aspect of the functioning of the most important devices in enterprises. Asynchronous drive is used in many areas of human activity, in industry as well as in everyday life. Mat...
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Format: | Article |
Language: | English |
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Penza State University Publishing House
2024-11-01
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Series: | Модели, системы, сети в экономике, технике, природе и обществе |
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author | D.V. Mirosh |
author_facet | D.V. Mirosh |
author_sort | D.V. Mirosh |
collection | DOAJ |
description | Background. The technical diagnostic tools used today in the repair and maintenance of asynchronous motors are an important aspect of the functioning of the most important devices in enterprises. Asynchronous drive is used in many areas of human activity, in industry as well as in everyday life. Materials and methods. The materials of this article present the technology of using convolutional neural networks for the diagnosis of inter-turn circuits in three-phase asynchronous motors with a short-circuited rotor, based on the use of a graphical representation of the relations of energy characteristics. Results. Data on vibration studies of traction electric motors of diesel locomotives, as well as direct measurements of the current of the studied asynchronous electric motors, were used as material for testing the capabilities and testing of the neural network. Conclusions. The use of the developed neural networks allows to improve diagnostic studies for asynchronous machines of various capacities, easily adapt them to different dimensional designs, improve the quality of diagnostic services provided and reduce the labor costs of diagnostic specialists in the study of the parameters of the state of an electric machine. |
format | Article |
id | doaj-art-7ef4216cdea447d78228bc9ff75b68e1 |
institution | Kabale University |
issn | 2227-8486 |
language | English |
publishDate | 2024-11-01 |
publisher | Penza State University Publishing House |
record_format | Article |
series | Модели, системы, сети в экономике, технике, природе и обществе |
spelling | doaj-art-7ef4216cdea447d78228bc9ff75b68e12025-01-30T12:26:38ZengPenza State University Publishing HouseМодели, системы, сети в экономике, технике, природе и обществе2227-84862024-11-01310511510.21685/2227-8486-2024-3-9Models, systems, networks in economics, engineering, nature and societyD.V. Mirosh 0Belarusian State University of TransportBackground. The technical diagnostic tools used today in the repair and maintenance of asynchronous motors are an important aspect of the functioning of the most important devices in enterprises. Asynchronous drive is used in many areas of human activity, in industry as well as in everyday life. Materials and methods. The materials of this article present the technology of using convolutional neural networks for the diagnosis of inter-turn circuits in three-phase asynchronous motors with a short-circuited rotor, based on the use of a graphical representation of the relations of energy characteristics. Results. Data on vibration studies of traction electric motors of diesel locomotives, as well as direct measurements of the current of the studied asynchronous electric motors, were used as material for testing the capabilities and testing of the neural network. Conclusions. The use of the developed neural networks allows to improve diagnostic studies for asynchronous machines of various capacities, easily adapt them to different dimensional designs, improve the quality of diagnostic services provided and reduce the labor costs of diagnostic specialists in the study of the parameters of the state of an electric machine.convolutional neural networkasynchronous electric motordiagnosticsinter-turn closurestator windingartificial closuretraction rolling stockelectric motor connection schemediagnostic efficiencyenergy efficiency |
spellingShingle | D.V. Mirosh Models, systems, networks in economics, engineering, nature and society Модели, системы, сети в экономике, технике, природе и обществе convolutional neural network asynchronous electric motor diagnostics inter-turn closure stator winding artificial closure traction rolling stock electric motor connection scheme diagnostic efficiency energy efficiency |
title | Models, systems, networks in economics, engineering, nature and society |
title_full | Models, systems, networks in economics, engineering, nature and society |
title_fullStr | Models, systems, networks in economics, engineering, nature and society |
title_full_unstemmed | Models, systems, networks in economics, engineering, nature and society |
title_short | Models, systems, networks in economics, engineering, nature and society |
title_sort | models systems networks in economics engineering nature and society |
topic | convolutional neural network asynchronous electric motor diagnostics inter-turn closure stator winding artificial closure traction rolling stock electric motor connection scheme diagnostic efficiency energy efficiency |
work_keys_str_mv | AT dvmirosh modelssystemsnetworksineconomicsengineeringnatureandsociety |