Li Zhe, Cui Yahui, Li Longlong, Chen Runlin, Dong Liang, Du Juan
School of Mechanical and Precision Instrument Engineering, Xi'an University of Technology, Xi'an 710048, China.
Department of Basic, Air Force Engineering University, Xi'an 710051, China.
Entropy (Basel). 2022 Feb 22;24(3):310. doi: 10.3390/e24030310.
In order to detect the incipient fault of rolling bearings and to effectively identify fault characteristics, based on amplitude-aware permutation entropy (), an enhanced method named hierarchical amplitude-aware permutation entropy () is proposed in this paper to solve complex time series in a new dynamic change analysis. Firstly, hierarchical analysis and are combined to excavate multilevel fault information, both low-frequency and high-frequency components of the abnormal bearing vibration signal. Secondly, from the experimental analysis, it is found that is sensitive to the early failure of rolling bearings, which makes it suitable to evaluate the performance degradation of a bearing in its run-to-failure life cycle. Finally, a fault feature selection strategy based on is put forward to select the bearing fault characteristics after the application of the least common multiple in singular value decomposition (LCM-SVD) method to the fault vibration signal. Moreover, several other entropy-based methods are also introduced for a comparative analysis of the experimental data, and the results demonstrate that can extract fault features more effectively and with a higher accuracy.
为了检测滚动轴承的早期故障并有效识别故障特征,本文基于幅度感知排列熵(),提出了一种名为分层幅度感知排列熵()的增强方法,用于在新的动态变化分析中解决复杂时间序列问题。首先,将分层分析与相结合,挖掘多级故障信息,包括异常轴承振动信号的低频和高频成分。其次,通过实验分析发现,对滚动轴承的早期故障敏感,这使得它适合评估轴承在其失效前生命周期中的性能退化。最后,提出了一种基于的故障特征选择策略,在对故障振动信号应用奇异值分解中的最小公倍数(LCM-SVD)方法后选择轴承故障特征。此外,还引入了其他几种基于熵的方法对实验数据进行对比分析,结果表明能够更有效地提取故障特征,且准确率更高。