A platform for research: civil engineering, architecture and urbanism
ROLLING BEARING FAULT DIAGNOSIS MЕТHOD BASED ON MORLET WAVELET AND CART DECISION TREE
In view of the technical problems in the process of rolling bearing fault diagnosis such as sample processing and identification of faults, a fault diagnosis classification method based on Morlet wavelets and classification and regression tree (CART) was proposed. Firstly, the Morlet wavelet analysis method and moving window method were used to process samples of the measured vibration signal of bearing. Secondly , the variational modal decomposition and feature extraction were performed on the extracted short samples to complete the construction of the training and test sets. Then, the training set was used to train the CART decision tree classification model, while random search and K-fold cross-validation were introduced to obtain the ideal classification model of bearing fault by optimizing the key parameters of the model. The test set validation results show that the method not only achieves effective diagnosis of various bearing faults and performs well in test sets with noise, but also significantly reduces the data length and sampling time of individual samples.
ROLLING BEARING FAULT DIAGNOSIS MЕТHOD BASED ON MORLET WAVELET AND CART DECISION TREE
In view of the technical problems in the process of rolling bearing fault diagnosis such as sample processing and identification of faults, a fault diagnosis classification method based on Morlet wavelets and classification and regression tree (CART) was proposed. Firstly, the Morlet wavelet analysis method and moving window method were used to process samples of the measured vibration signal of bearing. Secondly , the variational modal decomposition and feature extraction were performed on the extracted short samples to complete the construction of the training and test sets. Then, the training set was used to train the CART decision tree classification model, while random search and K-fold cross-validation were introduced to obtain the ideal classification model of bearing fault by optimizing the key parameters of the model. The test set validation results show that the method not only achieves effective diagnosis of various bearing faults and performs well in test sets with noise, but also significantly reduces the data length and sampling time of individual samples.
ROLLING BEARING FAULT DIAGNOSIS MЕТHOD BASED ON MORLET WAVELET AND CART DECISION TREE
LIU JunLi (author) / MIAO BingRong (author) / ZHANG Ying (author) / Ll YongJian (author) / HUANG Zhong (author)
2024
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
Bearing Fault Detection Based on Order Tracking and Complex Morlet Wavelet Transform
British Library Online Contents | 2011
|Prognostics for Ball Bearing Based on Neural Networks and Morlet Wavelet
British Library Online Contents | 2006
|Rolling element bearing fault diagnosis using wavelet transform
Tema Archive | 2011
|