Abstract
AbstractFeature information extraction is one of the key steps in prognostics and health management of rotating machinery. In the present study, an investigation about the feasibility of a methodology based on generalized S transform (GST) and singular value decomposition (SVD) methods for feature extraction in rolling bearing, due to local damage under variable conditions, is conducted. The technique adopts the GST method, following the time-frequency analysis, to transform a raw fault signal of the rolling bearing into a two-dimensional complex matrix. And then, the SVD method is performed to decompose the matrix to obtain the feature vectors. By this procedure it is possible to obtain the fault feature information of rolling bearing under different speeds and different loads. In order to streamline the feature parameters of the feature vectors to train more uncomplicated models, the principal component analysis (PCA) subsequently performed. The particle swarm optimization-support vector machine (PSO-SVM) model is used to identify and classify the different fault states of rolling bearing. Furthermore, in order to highlight the superiority of the proposed method some comparisons are conducted with the conventional methods. The obtained results show that the proposed method can effectively extract fault features of the rolling bearing under variable conditions.
Funder
Natural Science Foundation of Guangdong Province
Publisher
Springer Science and Business Media LLC
Subject
Industrial and Manufacturing Engineering,Mechanical Engineering
Reference37 articles.
1. S Gao, Q Wang, Y Zhang. Rolling bearing fault diagnosis based on CEEMDAN and refined composite multiscale fuzzy entropy. IEEE Transactions on Instrumentation and Measurement, 2021, 70: 1-8.
2. Y Zhou, S Yan, Y Ren, et al. Rolling bearing fault diagnosis using transient-extracting transform and linear discriminant analysis. Measurement, 2021, 178: 109298.
3. J Cheng, Y Yang, X Li, et al. Adaptive periodic mode decomposition and its application in rolling bearing fault diagnosis. Mechanical Systems and Signal Processing, 2021, 161: 107943.
4. J Zheng, H Pan, S Yang, et al. Generalized composite multiscale permutation entropy and Laplacian score based rolling bearing fault diagnosis. Mechanical Systems and Signal Processing, 2018, 99: 229-243.
5. Y Tian, J Ma, C Lu, et al. Rolling bearing fault diagnosis under variable conditions using LMD-SVD and extreme learning machine. Mechanism and Machine Theory, 2015, 90: 175-186.
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