Feature Extraction of Vibration of Centrifugal Fan Based on LLE

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Abstract:

In order to improve classification ability and diagnostic accuracy of centrifugal fan signals, a new feature extraction method from fault signals of centrifugal fan vibration based on manifold learning method (MLM) that is a kind of reduction method of data dimension is proposed in this paper.The MLM is able to remain nonlinear information of original signal, to improve the classification and diagnostic ability of fault better than traditional reducing dimension methods. The results in this paper show that, fault feature information of centrifugal fan vibration is extracted effectively by the MLM and the fault feature information of different types are separated effectively in themselves areas. The diagnostic accuracy by feature extracted by the MLM is significantly higher than by the wavelet packet analysis method.

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Periodical:

Advanced Materials Research (Volumes 1070-1072)

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1941-1944

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Online since:

December 2014

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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