Abstract
Bearing is one of the most important parts of rotating machinery with high failure rate, and its working state directly affects the performance of the entire equipment. Hence, it is of great significance to diagnose bearing faults, which can contribute to guaranteeing running stability and maintenance, thus promoting production efficiency and economic benefits. Usually, the bearing fault features are difficult to extract effectively, which results in low diagnosis performance. To solve the problem, this paper proposes a bearing fault feature extraction method and it establishes a bearing fault diagnosis method that is based on feature fusion. The basic idea of the method is as follows: firstly, the time-frequency feature of the bearing signal is extracted through Wavelet Packet Transform (WPT) to form the time-frequency characteristic matrix of the signal; secondly, the Multi-Weight Singular Value Decomposition (MWSVD) is constructed by singular value contribution rate and entropy weight. The features of the time-frequency feature matrix obtained by WPT are further extracted, and the features that are sensitive to fault in the time-frequency feature matrix are retained while the insensitive features are removed; finally, the extracted feature matrix is used as the input of the Support Vector Machine (SVM) classifier for bearing fault diagnosis. The proposed method is validated by data sets from the time-varying bearing data from the University of Ottawa and Case Western Reserve University Bearing Data Center. The results show that the algorithm can effectively diagnose the bearing under the steady-state and unsteady state. This paper proposes that the algorithm has better fault diagnosis capabilities and feature extraction capabilities when compared with methods that aree based on traditional feature technology.
Highlights
Rotating machinery is one of the most common classes of mechanical equipment and it plays a significant role in industrial applications [1]
The results show that the average diagnosis time for Wavelet Packet Transform (WPT)-Multi-Weight Singular Value Decomposition (MWSVD)+Support Vector Machine (SVM) model diagnosis to collect 1 s sample data only takes 10.63 s
WPT-MWSVD has a more scattered distribution of data samples as compared with the other three methods, which can effectively improve the classification accuracy of subsequent fault diagnosis, and effectively shorten the fault diagnosis time, which corresponds to the results shown in the MWSVD method that is constructed in this paper can effectively extract bearing signal features and improve the classification ability of SVM classifier
Summary
Rotating machinery is one of the most common classes of mechanical equipment and it plays a significant role in industrial applications [1]. The commonly used methods for extracting bearing signal features include empirical mode decomposition (EMD) and wavelet transform. The results showed that this method can extract the features of radar emitter signals very well This method can effectively reduce the calculation cost of SVD, this method only tried to square the singular value after dimensionality reduction, which cannot fully reflect the information of the data itself and the importance of sensitive features. The bearing vibration signal that is collected by the sensor obtains the time-frequency domain characteristics of the bearing through wavelet packet transform (WPT). This time-frequency domain feature is reduced dimension by the Multi-Weight.
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