Fault diagnosis of spur gearbox based on random forest and wavelet packet decomposition.

 

Authors
Cerrada Lozada, Mariela
Format
Article
Status
publishedVersion
Description

This paper addresses the development of a random forest classifier for the multi-class fault diagnosis in spur gearboxes. The vibration signal?s condition parameters are first extracted by applying the wavelet packet decomposition with multiple mother wavelets, and the coefficients? energy content for terminal nodes is used as the input feature for the classification problem. Then, a study through the parameters? space to find the best values for the number of trees and the number of random features is performed. In this way, the best set of mother wavelets for the application is identified and the best features are selected through the internal ranking of the random forest classifier. The results show that the proposed method reached 98.68% in classification accuracy, and high efficiency and robustness in the models.
Universidad Polit?cnica Salesiana
https://link.springer.com/article/10.1007%2Fs11465-015-0348-8

Publication Year
2015
Language
eng
Topic
FAULT DIAGNOSIS
SPUR GEARBOX
WAVELET PACKET DECOMPOSITION
RANDOM FOREST
Repository
Repositorio SENESCYT
Get full text
http://repositorio.educacionsuperior.gob.ec/handle/28000/3192
Rights
openAccess
License
openAccess