Unsupervised electric motor fault detection by using deep autoencoders

Volume: 6, Issue: 2, Pages: 441 - 451
Published: Mar 1, 2019
Abstract
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usually performed by experienced human operators. In the recent years, several methods have been proposed in the literature for detecting faults automatically. Deep neural networks have been successfully employed for this task, but, up to the authors' knowledge, they have never been used in an unsupervised scenario. This paper proposes an unsupervised...
Paper Details
Title
Unsupervised electric motor fault detection by using deep autoencoders
Published Date
Mar 1, 2019
Volume
6
Issue
2
Pages
441 - 451
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