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Feature selection for high-dimensional machinery fault diagnosis data using multiple models and Radial Basis Function networks

Zhang, K; Li, Y; Scarf, PA; Ball, A

Authors

K Zhang

Y Li

PA Scarf

A Ball



Abstract

The technique of machinery fault diagnosis has been greatly enhanced over recent years with the application of many pattern classification methods. However, these classification methods suffer from the ?curse of dimensionality? when applied to high-dimensional fault diagnosis data. In order to solve the problem, this paper proposes a hybrid model which combines multiple feature selection models to select the most significant input features from all potentially relevant features. Among the models, eight filter models are used to pre-rank the candidate features. They include data variance, Pearson correlation coefficient, the Relief algorithm, Fisher score, class separability, chi-squared, information gain and gain ratio. These variable ranking models measure features from various perspectives, and lead to different ranking results. Based on the effect of the ranking results on the Radial Basis Function (RBF) classification, a weighted voting scheme is then introduced to re-rank features. Furthermore, two wrapper models, a Binary Search (BS) model and a Sequential Backward Search (SBS) model are utilized to minimize the number of relevant features. To demonstrate the potential for applying the method to machinery fault diagnosis, two case studies are discussed. The experiment results support the conclusion that this method is useful for revealing fault-related frequency features.

Citation

Zhang, K., Li, Y., Scarf, P., & Ball, A. (2011). Feature selection for high-dimensional machinery fault diagnosis data using multiple models and Radial Basis Function networks. Neurocomputing, 74(17), 2941-2952. https://doi.org/10.1016/j.neucom.2011.03.043

Journal Article Type Article
Publication Date Oct 1, 2011
Deposit Date Aug 20, 2015
Journal Neurocomputing
Print ISSN 0925-2312
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 74
Issue 17
Pages 2941-2952
DOI https://doi.org/10.1016/j.neucom.2011.03.043
Publisher URL http://dx.doi.org/10.1016/j.neucom.2011.03.043
Related Public URLs http://eprints.ulster.ac.uk/20066/


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