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一种面向不平衡无标签数据的变工况下轴承故障诊断的半监督方法。

A Semi-Supervised Approach to Bearing Fault Diagnosis under Variable Conditions towards Imbalanced Unlabeled Data.

机构信息

State Key Lab of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, China.

National Engineering Laboratory for System Safety and Operation Assurance of Urban Rail Transit, Guangzhou 510000, China.

出版信息

Sensors (Basel). 2018 Jun 29;18(7):2097. doi: 10.3390/s18072097.

Abstract

Fault diagnosis of rolling element bearings is an effective technology to ensure the steadiness of rotating machineries. Most of the existing fault diagnosis algorithms are supervised methods and generally require sufficient labeled data for training. However, the acquisition of labeled samples is often laborious and costly in practice, whereas there are abundant unlabeled samples which also imply health information of bearings. Thus, it is worthwhile to develop semi-supervised methods of fault diagnosis to make effective use of the plentiful unlabeled samples. Nevertheless, considering the normal data are much more than the faulty ones, the problem of imbalanced data exists among unlabeled samples for fault diagnosis. Besides, in practice, bearings often work under uncertain and variable operation conditions, which would also have negative influence on fault diagnosis. To solve these issues, a novel hybrid method for bearing fault diagnosis is proposed in this paper: (1) Inspired by visibility graph, a novel fault feature extraction method named visibility graph feature (VGF) is proposed. The obtained features by VGF are natively insensitive to variable conditions, which has been validated by a simulation experiment in this paper; (2) On basis of VGF, to deal with imbalanced unlabeled data, graph-based rebalance semi-supervised learning (GRSSL) for fault diagnosis is proposed. In GRSSL, a graph based on a weighted sparse adjacency matrix is constructed by the k-nearest neighbors and Gaussian Kernel weighting algorithm by means of the samples. Then, a bivariate cost function over classification and normalized label variable is built up to rebalance the importance of labels. Finally, the proposed VGF-GRSSL method was verified by data collected from Case Western Reserve University Bearing Data Center. The experiment results show that the proposed method of bearing fault diagnosis performs effectively to deal with the imbalanced unlabeled data under variable conditions.

摘要

滚动轴承故障诊断是确保旋转机械稳定性的有效技术。大多数现有的故障诊断算法都是监督方法,通常需要足够的标记数据进行训练。然而,在实践中,获取标记样本通常是费力且昂贵的,而大量的未标记样本也隐含了轴承的健康信息。因此,开发半监督故障诊断方法以有效利用丰富的未标记样本是值得的。然而,考虑到正常数据比故障数据多得多,未标记样本中存在不平衡数据问题。此外,在实际中,轴承通常在不确定和变化的操作条件下工作,这也会对故障诊断产生负面影响。为了解决这些问题,本文提出了一种用于轴承故障诊断的新型混合方法:(1)受可视性图的启发,提出了一种新的故障特征提取方法,称为可视性图特征(VGF)。通过 VGF 获得的特征对变化条件具有固有不敏感性,本文通过仿真实验验证了这一点;(2)基于 VGF,为了处理不平衡的未标记数据,提出了基于图的再平衡半监督学习(GRSSL)用于故障诊断。在 GRSSL 中,通过 k-最近邻和高斯核加权算法,基于样本构建基于加权稀疏邻接矩阵的图。然后,建立一个关于分类和归一化标签变量的双变量成本函数,以重新平衡标签的重要性。最后,通过凯斯西储大学轴承数据中心收集的数据验证了所提出的 VGF-GRSSL 方法。实验结果表明,所提出的轴承故障诊断方法在变化条件下有效地处理不平衡的未标记数据。

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