Abstract

Feature extraction is a key procedure in the fault diagnosis of rotating machinery. To obtain fault features with lower dimensionality and higher sensitivity, a feature extraction method based on adaptive multiwavelets transform (AMWT) and local tangent space alignment (LTSA) is proposed in this paper. AMWT is first used to obtain multiple features from the vibration signals of the machine under test to form a high-dimensional feature set. Then, in order to avoid the adverse effect of the irrelevant features in this high-dimensional feature set on the fault diagnosis result, a detection index (DI) is investigated to evaluate the sensitivity of the features and those with lower sensitivity are removed. After that, LTSA is applied for feature fusion to reduce the redundant features in the high-dimensional feature set. To validate the proposed method, performance of four feature extraction schemes based on (i) wavelet and LTSA, (ii) Geronimo, Hardin, and Massopust (GHM) multiwavelets and LTSA, (iii) AMWT and principal component analysis (PCA), and (iv) AMWT and multidimensional scaling (MDS) is compared with the proposed method. The feature extraction results by these methods are then fed into K-medoids classifier to discriminate the faults. The results show that the proposed method can improve the sensitivity of the extracted features and obtain higher fault recognition rate.

Highlights

  • Rotating machinery is widely used in the modern industry [1, 2]

  • Multiple methods have been extensively applied for vibration signal processing, such as fast Fourier transform (FFT), short-time Fourier transform (STFT) [8], wavelet transform (WT) [9], Wigner–Ville distribution (WVD) [10], empirical mode decomposition (EMD) [11], multiwavelets transform (MWT) [12], etc

  • Shock and Vibration sensitivity of the extracted fault features [13]. erefore, adaptive multiwavelets transform (AMWT) constructed based on two-scale similarity transform (TST) [14] has been investigated in this paper and applied to feature extraction for fault diagnosis of rotating machinery

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Summary

Introduction

Rotating machinery is widely used in the modern industry [1, 2]. Faults occurring in rotating machinery may lead to fatal breakdowns. erefore, it is important to diagnose the existence of the rotating machinery faults accurately at an early stage to avoid huge maintenance cost and catastrophic accidents [3, 4]. Erefore, AMWT constructed based on two-scale similarity transform (TST) [14] has been investigated in this paper and applied to feature extraction for fault diagnosis of rotating machinery. A new feature extraction method based on AMWT and LTSA is proposed With this method, efforts have been made in three aspects in order to extract fault features with lower dimensionality and higher sensitivity from rotating machinery signals. Results of the studies show that, with the proposed method, fault features with lower dimensionality and higher sensitivity can be obtained, and the accuracy of the rotating machinery fault diagnosis can be improved.

Adaptive Multiwavelets and LTSA
Application Experiments
Conclusions
Method
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