TY - JOUR
T1 - 无监督学习驱动的高端轴承故障智能诊断算法
AU - Chen, Binqiang
AU - Zeng, Nianyin
AU - Cao, Xincheng
AU - Zhou, Shengxi
AU - He, Wangpeng
AU - Tian, Sai
N1 - Publisher Copyright:
© 2022, Science Press. All right reserved.
PY - 2022/1
Y1 - 2022/1
N2 - Spectral kurtosis is an effective method for rolling bearing fault diagnosis. However, it is highly sensitive to common accidental impact features in engineering, which frequently leads to feature extraction failure. To solve this problem, a robust evaluation method based on unsupervised learning is proposed to calculate the kurtosis of time series under the interference of multiple sporadic impulses (MSIs). First, dynamic signal samples are divided into equal intervals according to the characteristics of high energy concentration in the time domain. Second, each block is mapped to statistical parameter feature space (SPFS). Third, based on the significant statistical difference between MSI and other components in SPFS, an isolated 2-means clustering algorithm is proposed that realizes the self-location of clustering center and self-adaptive adjustment of clustering number and identifies and suppresses blocks receiving interference in the signal step by step. Finally, kurtosis information fusion is performed for the remaining samples, excluding MSI interference. A new method for high-end bearing fault diagnosis is proposed, which is combined with the robust kurtosis evaluation method and the multi-scale decomposition method. Through simulations and actual bearing fault diagnosis, it is verified that the method can accurately extract abnormal fault features under the adverse effects of multicomponent coupling and multiple accidental impact interference and can consider intelligence, high robustness, and high computational efficiency in applications.
AB - Spectral kurtosis is an effective method for rolling bearing fault diagnosis. However, it is highly sensitive to common accidental impact features in engineering, which frequently leads to feature extraction failure. To solve this problem, a robust evaluation method based on unsupervised learning is proposed to calculate the kurtosis of time series under the interference of multiple sporadic impulses (MSIs). First, dynamic signal samples are divided into equal intervals according to the characteristics of high energy concentration in the time domain. Second, each block is mapped to statistical parameter feature space (SPFS). Third, based on the significant statistical difference between MSI and other components in SPFS, an isolated 2-means clustering algorithm is proposed that realizes the self-location of clustering center and self-adaptive adjustment of clustering number and identifies and suppresses blocks receiving interference in the signal step by step. Finally, kurtosis information fusion is performed for the remaining samples, excluding MSI interference. A new method for high-end bearing fault diagnosis is proposed, which is combined with the robust kurtosis evaluation method and the multi-scale decomposition method. Through simulations and actual bearing fault diagnosis, it is verified that the method can accurately extract abnormal fault features under the adverse effects of multicomponent coupling and multiple accidental impact interference and can consider intelligence, high robustness, and high computational efficiency in applications.
KW - Fault diagnosis
KW - Iterative mean clustering
KW - Rolling bearing
KW - Spectral kurtosis
KW - Unsupervised learning
UR - http://www.scopus.com/inward/record.url?scp=85123395440&partnerID=8YFLogxK
U2 - 10.1360/SST-2021-0296
DO - 10.1360/SST-2021-0296
M3 - 文章
AN - SCOPUS:85123395440
SN - 1674-7259
VL - 52
SP - 165
EP - 179
JO - Zhongguo Kexue Jishu Kexue/Scientia Sinica Technologica
JF - Zhongguo Kexue Jishu Kexue/Scientia Sinica Technologica
IS - 1
ER -