LIU JunLi, MIAO BingRong, ZHANG Ying, et al. ROLLING BEARING FAULT DIAGNOSIS MЕТHOD BASED ON MORLET WAVELET AND CART DECISION TREE[J]. Journal of Mechanical Strength , 2024,46(1):1-8.
LIU JunLi, MIAO BingRong, ZHANG Ying, et al. ROLLING BEARING FAULT DIAGNOSIS MЕТHOD BASED ON MORLET WAVELET AND CART DECISION TREE[J]. Journal of Mechanical Strength , 2024,46(1):1-8. DOI: 10.16579/j.issn.1001.9669.2024.01.001.
针对滚动轴承故障诊断过程中样本处理、故障识别等技术问题,提出一种基于Morlet小波和分类回归树(Classification and Regression Tree,CART)的滚动轴承故障诊断方法。首先,利用Morlet 小波分析方法和移动窗方法对轴承振动信号进行样本处理。其次,树提取的短样本进行变分模态分解与特征提取,完成训练集和测试集的构建。然后,使用训练集训练 CART决策树分类模型,同时引入随机搜索和K折交叉验证用于模型关键参数优化,以获取理想的轴承故障分类模型。测试集验证结果表明,该方法不但能实现多种轴承故障的有效诊断、在含噪测试集中表现良好,而且单个样本的数据长度和采样时长的缩短效果明显。
Abstract
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.
关键词
故障诊断滚动轴承Morlet小波VMDCART决策树
Keywords
Fault diagnosisRolling bearingMorlet waveletVMDCART decision tree