Development of a Neural Network for a Digital Twin of Three-Winding Transformer

Bibliographic Details
Parent link:Problems of Informatics, Electronics and Radio Engineering (PIERE): Proceedings of the 2024 IEEE 3rd International Conference, Novosibirsk, Russian Federation, November 15-17, 2024/ IEEE Russia Siberia Section. P. 1060-1063.— : IEEE, 2024.— https://doi.org/10.1109/PIERE62470.2024
Other Authors: Mikhaylovich M. A. Maksim Andreevich, Leonov S. V. Sergey Vladimirovich, Khudonogova L. I. Ludmila Igorevna, Mamonova T. E. Tatiana Egorovna
Summary:This article discusses an approach to the design of a neural network for a three-winding transformer as part of a digital twin. The structure of the neural network is shown, important aspects for choosing the number of input neurons, hidden layers of the network, neurons located in the hidden layer, and neurons at the output of the network are described, the activation functions used are presented. A neural network is used to predict the values of transformer phase voltages. A transformer operating in idle mode is considered. The data for training the neural network is calculated using a digital model of a power transformer created in the Simulink application of the MatLab program. As the results of the experiment, a neural network training graph and a neural network testing error graph for five tests are presented. In the future, the neural network model is planned to be improved by training it for short-circuit mode and nominal mode. The predicted values obtained will be applied to subsequent classifications of emergency operation modes of transformers, namely “steel fire” of the transformer, single-phase ground faults, interturn, phase-to-phase and inter-winding short circuits, as well as to predict the remaining lifetime of equipment for scheduled preventive repairs
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Published: 2024
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Online Access:https://doi.org/10.1109/PIERE62470.2024.10805031
Format: Electronic Book Chapter
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=678402
Description
Summary:This article discusses an approach to the design of a neural network for a three-winding transformer as part of a digital twin. The structure of the neural network is shown, important aspects for choosing the number of input neurons, hidden layers of the network, neurons located in the hidden layer, and neurons at the output of the network are described, the activation functions used are presented. A neural network is used to predict the values of transformer phase voltages. A transformer operating in idle mode is considered. The data for training the neural network is calculated using a digital model of a power transformer created in the Simulink application of the MatLab program. As the results of the experiment, a neural network training graph and a neural network testing error graph for five tests are presented. In the future, the neural network model is planned to be improved by training it for short-circuit mode and nominal mode. The predicted values obtained will be applied to subsequent classifications of emergency operation modes of transformers, namely “steel fire” of the transformer, single-phase ground faults, interturn, phase-to-phase and inter-winding short circuits, as well as to predict the remaining lifetime of equipment for scheduled preventive repairs
Текстовый файл
AM_Agreement
DOI:10.1109/PIERE62470.2024.10805031