计算机科学 ›› 2015, Vol. 42 ›› Issue (Z6): 134-137.

• 智能计算 • 上一篇    下一篇

一种半监督SVDD-KFCM算法及其在轴承故障检测中的应用

李军利,李巍华   

  1. 珠海城市职业技术学院机电工程学院 珠海519090,华南理工大学机械与汽车工程学院 广州510641
  • 出版日期:2018-11-14 发布日期:2018-11-14

Semi-supervised SVDD-KFCM Algorithm and its Application in Bearing Fault Detection

LI Jun-li and LI Wei-hua   

  • Online:2018-11-14 Published:2018-11-14

摘要: 对机械设备故障诊断过程中故障样本较难提取和运行转速、载荷多变导致诊断方法的适用性不强、准确性不高等问题进行分析,结合支持向量数据描述(Support Vector Data Description,SVDD)算法与模糊核聚类(Kernel-based Fuzzy c-Means,KFCM)算法,提出一种基于半监督学习的SVDD-KFCM(Semi-supervised SVDD-KFCM,SS-KFCM)方法用于轴承故障检测。实验表明,在复杂多载荷工况下该算法可有效检测轴承故障,诊断准确率较高。

Abstract: Machinery is always running under multiple operating regimes,and it is difficult to collect the specific fault samples to train the learning machine,which also leads to the low accuracy in fault detection and limits the generalization of the intelligent fault detection methods.Combining the support vector data description and the kernel-based fuzzy C-means clustering,a semi-supervised SVDD-KFCM algorithm for machine defect detection was proposed.Experiment results demonstrate that the proposed scheme is capable of detecting the incipient bearing fault effectively and correctly.

Key words: SVDD,KFCM,Fault detection,Semi-supervised learning

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