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Mahalanobis-ANOVA criterion for optimum feature subset selection in multi-class planetary gear fault diagnosis
- Source :
- Journal of Vibration and Control. 28:3257-3268
- Publication Year :
- 2021
- Publisher :
- SAGE Publications, 2021.
-
Abstract
- The empirical analysis of a typical gear fault diagnosis of five different classes has been studied in this article. The analysis was used to develop novel feature selection criteria that provide an optimum feature subset over feature ranking genetic algorithms for improving the planetary gear fault classification accuracy. We have considered traditional approach in the fault diagnosis, where the raw vibration signal was divided into fixed-length epochs, and statistical time-domain features have been extracted from the segmented signal to represent the data in a compact discriminative form. Scale-invariant Mahalanobis distance–based feature selection using ANOVA statistic test was used as a feature selection criterion to find out the optimum feature subset. The Support Vector Machine Multi-Class machine learning algorithm was used as a classification technique to diagnose the gear faults. It has been observed that the highest gear fault classification accuracy of 99.89% (load case) was achieved by using the proposed Mahalanobis-ANOVA Criterion for optimum feature subset selection followed by Support Vector Machine Multi-Class algorithm. It is also noted that the developed feature selection criterion is a data-driven model which will contemplate all the nonlinearity in a signal. The fault diagnosis consistency of the proposed Support Vector Machine Multi-Class learning algorithm was ensured through 100 Monte Carlo runs, and the diagnostic ability of the classifier has been represented using confusion matrix and receiver operating characteristics.
- Subjects :
- 0209 industrial biotechnology
Mahalanobis distance
business.industry
Computer science
Mechanical Engineering
Feature extraction
Aerospace Engineering
Condition monitoring
Pattern recognition
Feature selection
02 engineering and technology
Fault (power engineering)
Class (biology)
020303 mechanical engineering & transports
020901 industrial engineering & automation
0203 mechanical engineering
Mechanics of Materials
Feature (computer vision)
Automotive Engineering
General Materials Science
Artificial intelligence
business
Selection (genetic algorithm)
Subjects
Details
- ISSN :
- 17412986 and 10775463
- Volume :
- 28
- Database :
- OpenAIRE
- Journal :
- Journal of Vibration and Control
- Accession number :
- edsair.doi...........1be08fd8b739257b2b73faa65e350b22
- Full Text :
- https://doi.org/10.1177/10775463211029153