严旭, 刘若晨, 张兰春, 孙见忠, 周子元. 基于静电监测和稀疏表示的滚动轴承故障特征提取方法研究[J]. 制造技术与机床, 2023, (9): 9-16. DOI: 10.19287/j.mtmt.1005-2402.2023.09.001
引用本文: 严旭, 刘若晨, 张兰春, 孙见忠, 周子元. 基于静电监测和稀疏表示的滚动轴承故障特征提取方法研究[J]. 制造技术与机床, 2023, (9): 9-16. DOI: 10.19287/j.mtmt.1005-2402.2023.09.001
YAN Xu, LIU Ruochen, ZHANG Lanchun, SUN Jianzhong, ZHOU Ziyuan. Research on rolling bearing fault feature extraction method based on electrostatic monitoring and sparse representation[J]. Manufacturing Technology & Machine Tool, 2023, (9): 9-16. DOI: 10.19287/j.mtmt.1005-2402.2023.09.001
Citation: YAN Xu, LIU Ruochen, ZHANG Lanchun, SUN Jianzhong, ZHOU Ziyuan. Research on rolling bearing fault feature extraction method based on electrostatic monitoring and sparse representation[J]. Manufacturing Technology & Machine Tool, 2023, (9): 9-16. DOI: 10.19287/j.mtmt.1005-2402.2023.09.001

基于静电监测和稀疏表示的滚动轴承故障特征提取方法研究

Research on rolling bearing fault feature extraction method based on electrostatic monitoring and sparse representation

  • 摘要: 静电监测是一种高灵敏的监测方式,能够更早监测到系统性能退化的发生,但静电信号微弱,在实际复杂环境中易受到工况变化干扰而降低其监测能力。在滚动轴承静电监测过程中,有效静电信号易被噪声淹没,故障特征难以提取。为解决上述问题,提出基于聚类收缩分段正交匹配追踪算法(cluster-contraction stagewise orthogonal matching pursuit,CcStOMP)稀疏表示的方法用于滚动轴承静电信号故障特征提取。该方法在分段正交匹配追踪算法(stagewise orthogonal matching pursuit,StOMP)中加入聚类收缩机制,在原子搜索过程中对所选原子进行二次过滤,更新支撑集,最后求解权值并更新残差对原始静电信号重构,提取滚动轴承故障特征成分,保持快速收敛性,同时提高了稀疏恢复的准确性。通过监测滚动轴承外圈和轴承滚子故障实测信号,与StOMP算法对比分析得出,CcStOMP算法具有更准确提取滚动轴承静电监测信号的故障特征的优点。

     

    Abstract: Electrostatic monitoring is a highly sensitive monitoring method, which can monitor the occurrence of system performance degradation earlier, but the electrostatic signal is weak, and in the actual complex environment is easily disturbed by changes in working conditions and reduces its monitoring capability. In the process of rolling bearing electrostatic monitoring, the effective electrostatic signal is easily drowned by noise, and the fault characteristics are difficult to extract. In order to solve the above problems, a method based on the sparse representation of the clustering shrinkage segmental orthogonal matching tracking algorithm (CcStOMP) is proposed for rolling bearing electrostatic signal fault feature extraction. The method adds a clustering shrinkage mechanism to the segmented orthogonal matching tracking algorithm (StOMP), performs secondary filtering on the selected atoms during the atomic search, updates the support set, and finally solves for the weights and updates the residuals to reconstruct the original electrostatic signal to extract the rolling bearing fault feature components, maintaining fast convergence while improving the accuracy of sparse recovery. By monitoring the measured signals of rolling bearing outer ring and bearing roller faults, a comparison with the StOMP algorithm shows that the CcStOMP algorithm has the advantage of accurately extracting the fault characteristic components of the rolling bearing electrostatic monitoring signals.

     

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