Artículo de revista
Deep semi-supervised generative adversarial fault diagnostics of rolling element bearings
Fecha
2020Registro en:
17413168
14759217
10.1177/1475921719850576
Autor
Verstraete, David Benjamin
López Droguett, Enrique
Meruane Naranjo, Viviana
Modarres, Mohammad
Ferrada, Andrés
Institución
Resumen
© The Author(s) 2019.With the availability of cheaper multisensor suites, one has access to massive and multidimensional datasets that can and should be used for fault diagnosis. However, from a time, resource, engineering, and computational perspective, it is often cost prohibitive to label all the data streaming into a database in the context of big machinery data, that is, massive multidimensional data. Therefore, this article proposes both a fully unsupervised and a semi-supervised deep learning enabled generative adversarial network-based methodology for fault diagnostics. Two public datasets of vibration data from rolling element bearings are used to evaluate the performance of the proposed methodology for fault diagnostics. The results indicate that the proposed methodology is a promising approach for both unsupervised and semi-supervised fault diagnostics.