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Erschienen in: Journal of Intelligent Manufacturing 2/2017

21.11.2014

Detection of defective embedded bearings by sound analysis: a machine learning approach

verfasst von: Mario A. Saucedo-Espinosa, Hugo Jair Escalante, Arturo Berrones

Erschienen in: Journal of Intelligent Manufacturing | Ausgabe 2/2017

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Abstract

This paper describes a machine learning solution for the detection of defective embedded bearings in home appliances by sound analysis. The bearings are installed deep into the home appliances at the beginning of the production process and cannot be physically accessed once they are fully assembled. Before a home appliance is put to sale, it is turned on and passed through a sound-based sensor that produces an acoustic signal. Home appliances with defective embedded bearings are detected by analyzing such signals. The approached task is very challenging, mainly because there is a small number of sample signals and the noise level in the measurements is quite high. In fact, it is showed that the signal-to-noise ratio is high enough to mask important components when applying traditional Fourier decomposition techniques. Hence, a different approach is needed. Experimental results are reported on both laboratory and production line signals. Despite the difficulty of the task, these results are encouraging. Several classification methods were evaluated and most of them achieved acceptable performance. An interesting finding is that, among the classifiers that showed better performance, some methods are highly intuitive and easy to implement. These methods are generally preferred in industry. The proposed solution is being implemented by the company which motivated this study.

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Fußnoten
1
Due to confidentiality clauses, the authors are not authorized to reveal the name of the company nor the home appliance under analysis.
 
2
It is emphasized that due to confidentiality clauses, the authors are not authorized to reveal further technical details about the data acquisition system.
 
3
One should note that, when using filters for feature selection, this procedure is the standard feature selection methodology: features are ranked in descending order of relevance and the user selects the features to be used (Guyon and Elisseeff 2003; Guyon et al. 2006).
 
4
Note that linear functions are linear in the parameters and not in the inputs, hence they can generate nonlinear decision surfaces. For instance, a Multilayer Perceptron learns linear weights yet it generates nonlinear decision surfaces, because data is projected into a higher-dimensional space.
 
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Metadaten
Titel
Detection of defective embedded bearings by sound analysis: a machine learning approach
verfasst von
Mario A. Saucedo-Espinosa
Hugo Jair Escalante
Arturo Berrones
Publikationsdatum
21.11.2014
Verlag
Springer US
Erschienen in
Journal of Intelligent Manufacturing / Ausgabe 2/2017
Print ISSN: 0956-5515
Elektronische ISSN: 1572-8145
DOI
https://doi.org/10.1007/s10845-014-1000-x

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