Classification of time-frequency representations using improved morphological pattern spectrum for engine fault diagnosis

2013 ◽  
Vol 332 (13) ◽  
pp. 3329-3337 ◽  
Author(s):  
Bing Li ◽  
Shuang-shan Mi ◽  
Peng-yuan Liu ◽  
Zheng-jun Wang
Author(s):  
B Li ◽  
P-L Zhang ◽  
Z-J Wang ◽  
S-S Mi ◽  
D-S Liu

Time–frequency representations (TFR) have been intensively employed for analysing vibration signals in gear fault diagnosis. However, in many applications, TFR are simply utilized as a visual aid to detect gear defects. An attractive issue is to utilize the TFR for automatic classification of faults. A key step for this study is to extract discriminative features from TFR as input feature vector for classifiers. This article contributes to this ongoing investigation by applying morphological pattern spectrum (MPS) to characterize the TFR for gear fault diagnosis. The S transform, which combines the separate strengths of the short-time Fourier transform and wavelet transforms, is chosen to perform the time–frequency analysis of vibration signals from gear. Then, the MPS scheme is applied to extract the discriminative features from the TFR. The promise of MPS is illustrated by performing our procedure on vibration signals measured from a gearbox with five operating states. Experiment results demonstrate the MPS to be a satisfactory scheme for characterizing TFRs for an accurate classification of gear faults.


Author(s):  
Juan Manuel Ramirez-Cortes ◽  
Pilar Gomez-Gil ◽  
Vicente Alarcon-Aquino ◽  
Jesus Gonzalez-Bernal ◽  
Angel Garcia-Pedrero

2011 ◽  
Vol 11 (8) ◽  
pp. 5299-5305 ◽  
Author(s):  
Bing Li ◽  
Pei-lin Zhang ◽  
Dong-sheng Liu ◽  
Shuang-shan Mi ◽  
Peng-yuan Liu

2015 ◽  
Vol 73 ◽  
pp. 149-157 ◽  
Author(s):  
D. Hernandez-Contreras ◽  
H. Peregrina-Barreto ◽  
J. Rangel-Magdaleno ◽  
J. Ramirez-Cortes ◽  
F. Renero-Carrillo

2019 ◽  
Vol 2019 ◽  
pp. 1-13
Author(s):  
Guodong Sun ◽  
Yuan Gao ◽  
Kai Lin ◽  
Ye Hu

To accurately diagnose fine-grained fault of rolling bearing, this paper proposed a new fault diagnosis method combining multisynchrosqueezing transform (MSST) and sparse feature coding based on dictionary learning (SFC-DL). Firstly, the high-resolution time-frequency images of raw vibration signals, including different kinds of fine-grained faults of rolling bearing, were constructed by MSST. Then, the basis dictionary was trained through nonnegative matrix factorization with sparseness constraints (NMFSC), and the trained basis dictionary was employed to extract features from time-frequency matrixes by using nonnegative linear equations. Finally, a linear support vector machine (LSVM) was trained with features of training samples, and the trained LSVM was employed to diagnosis the fault classification of test samples. Compared with state-of-the-art fault diagnosis methods, the proposed method, which was tested on the bearing dataset from Case Western Reserve University (CWRU), achieved the fine-grained classification of 10 mixed fault states. Meanwhile, the proposed method was applied on the dataset from the Machinery Failure Prevention Technology (MFPT) Society and realized the classification of 3 fault states under different working conditions. These results indicate that the proposed method has great robustness and could better meet the needs of practical engineering.


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