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Cited 21 time in webofscience Cited 26 time in scopus
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Wavelet energy-based visualization and classification of high-dimensional signal for bearing fault detection

Authors
Jung, UkKoh, Bong-Hwan
Issue Date
Jul-2015
Publisher
SPRINGER LONDON LTD
Keywords
Wavelet energy; Scalogram; Silhouette statistic; Visualization; Vibration; Classification
Citation
KNOWLEDGE AND INFORMATION SYSTEMS, v.44, no.1, pp 197 - 215
Pages
19
Indexed
SCIE
SCOPUS
Journal Title
KNOWLEDGE AND INFORMATION SYSTEMS
Volume
44
Number
1
Start Page
197
End Page
215
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/15057
DOI
10.1007/s10115-014-0761-z
ISSN
0219-1377
0219-3116
Abstract
This study investigates a methodology for interpretable visualizing and classifying high-dimensional data such as vibration signals in machine fault detection application. Although principal component analysis is one of the most widely used dimension reduction methods, it does not clearly explain the source of signal variations (i.e., statistical characteristics such as mean and variance), but just locate signals on low-dimensional space which maximizing data dispersion. This deficiency restricts its interpretability to specific problems of process control and thus limits their broader usefulness. To overcome this deficiency, this study exploits the multiscale energy analysis of discrete wavelet transformation, so-called wavelet scalogram, in unsupervised manner. Wavelet scalogram allows us to first obtain a very low-dimensional feature subset of our data, which is strongly correlated with the characteristics of the data without considering the classification method used, although each of these features is uncorrelated with each other. In supervised learning scheme, it can be eventually combined with silhouette statistics for the purpose of more effective visualization of the main sources of different classes and classifying signals into different classes. Finally, nonparametric multi-class classifiers such as classification and regression tree and k-nearest neighbors quantitatively evaluate the performance of our approach for machine fault classification problem in terms of the 10-fold misclassification error rate.
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College of Engineering > Department of Mechanical, Robotics and Energy Engineering > 1. Journal Articles
Dongguk Business School > Department of Business Administration > 1. Journal Articles

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Koh, Bong Hwan
College of Engineering (Department of Mechanical, Robotics and Energy Engineering)
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