A multi-order moment matching-based unsupervised domain adaptation with application to cross-working condition fault diagnosis of rolling bearings

Qi Chang, Congcong Fang, Wei Zhou, Xianghui Meng
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Abstract

Unsupervised domain adaptation-based transfer learning (TL) has been widely used in rolling bearing fault diagnosis to overcome the problem of limited and non-identically distributed labeled data. Discrepancy-based alignment is a popular domain adaptation method in TL. However, due to the inability to completely eliminate domain drift, the classifier learned from the source domain may easily misclassify some target domain samples that are scattered near the decision edge. In this work, a multi-order moment matching-based domain adaptation is proposed to address the issue. Low- and high-order moment matching is simultaneously applied to describe the complex non-Gaussian distributions in more detail and realize coarse- and fine-grained hybrid domain alignment. Furthermore, a discriminative clustering approach is employed to extract domain-invariant features of inter-class discrimination and intra-class compactness, which effectively reduces the negative transfer caused by hard-aligned target samples. The application of the proposed model to the experimental dataset demonstrates that the model can significantly improve the diagnosis accuracy of rolling bearing faults in cross-working conditions. This study can be of assistance to engineers in promptly identifying and addressing rolling bearing faults, ultimately enhancing the reliability and safety of equipment.
基于多阶矩匹配的无监督域适应,应用于滚动轴承的跨工况故障诊断
基于无监督领域适应的迁移学习(TL)已被广泛应用于滚动轴承故障诊断,以克服标记数据有限且分布不一致的问题。基于差异的对齐是迁移学习中常用的域适应方法。然而,由于无法完全消除域漂移,从源域学习到的分类器很容易误分类一些分散在决策边缘附近的目标域样本。本文提出了一种基于多阶矩匹配的域自适应方法来解决这一问题。低阶和高阶矩匹配同时应用,以更详细地描述复杂的非高斯分布,实现粗粒度和细粒度的混合域对齐。此外,还采用了一种判别聚类方法来提取类间判别和类内紧凑性的域不变特征,从而有效减少了硬配准目标样本造成的负转移。将所提出的模型应用于实验数据集的结果表明,该模型能显著提高交叉工作条件下滚动轴承故障的诊断准确率。这项研究有助于工程师及时发现和处理滚动轴承故障,最终提高设备的可靠性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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