Semi-supervised classification for rolling fault diagnosis via robust sparse and low-rank model

Mingbo Zhao, Bing Li, Jie Qi, Yongsheng Ding
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引用次数: 5

Abstract

Rolling element bearings play an important role in ensuring the availability of industrial machines. Unexpected bearing failures in such machines during field operation can lead to machine breakdown, which may have some pretty severe implications. However, the insufficiency of labeled samples is major problem for handling fault diagnosis problem. To address such concern, we propose a semi-supervised method for diagnosing faulty bearings by utilizing unlabeled samples. The superiority of our algorithm has been validated by comparison with other state-of art methods based on a rolling element bearing data. The classification accuracy of bearing data show that our algorithm is able to recognize different bearing fault categories effectively. Thus, it can be considered as a promising method for fault diagnosis.
基于鲁棒稀疏低秩模型的滚动故障诊断半监督分类
滚动轴承在保证工业机械的可用性方面起着重要的作用。在这些机器的现场操作中,意外的轴承故障可能导致机器故障,这可能会产生一些相当严重的影响。然而,标记样本的不足是处理故障诊断问题的主要问题。为了解决这一问题,我们提出了一种半监督方法,通过使用未标记的样本来诊断故障轴承。通过与其他基于滚动轴承数据的方法的比较,验证了该算法的优越性。轴承数据的分类精度表明,该算法能够有效识别不同类型的轴承故障。因此,它可以被认为是一种很有前途的故障诊断方法。
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