Přístupnostní navigace
E-application
Search Search Close
Applied result detail
KOPEČNÝ, L.; DOSEDĚL, M.; KOZOVSKÝ, M.; HAVRÁNEK, Z.
Original Title
Pre-trained classifier of electrical motor winding fault based on multiple-branch convolutional neural networks
English Title
Type
Software
Abstract
Software implementation of an artificial neural network for detecting a fault in the winding of an electric motor. The neural network is implemented in the Python environment in the Keras module designed for creating neural networks. The neural network uses the branching capabilities of the neural network. Each input is pre-processed in its own branch using a convolution layer. The results of the individual branches are combined and again evaluated by the resulting Dense layer. The trained network model is able to determine the fault of the electric motor winding.
Abstract in English
Keywords
multiple-branch neural network, convolutional netvork, Python, Keras, electrical motor winding fault
Key words in English
Location
Vysoké učení technické v Brně, CEITEC VUT Laboratoř pokročilých senzorů, B1.04 Purkyňova 656/123 612 00 Brno
Licence fee
In order to use the result by another entity, it is always necessary to acquire a license
www
https://ai4di.ceitec.cz/vysledky/cnn_fault_classifier