Interpretable Siamese dual attention enhancement transfer compound diagnostic model for unbalanced samples

Kun Xu, Shunming Li, Xiaodong Miao, Hua Wang, Ranran Li
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Abstract

The intelligent transfer diagnosis model is used to address the issue of feature drift caused by the changing working conditions of rotating parts in engineering. However, few models can perform transfer diagnosis on multiple unbalanced samples of rotating parts simultaneously, and even fewer models can visually enhance the domain-invariant features, making them more interpretable. To address these issues, we propose a novel interpretable Siamese dual attention enhancement transfer compound diagnosis model for unbalanced samples. The model can diagnose multiple rotating parts simultaneously and consists of a channel feature attention enhancement (CFAE) network, a fragment feature attention enhancement (FFAE) network, and a Siamese feature fusion (SFF) network. The CFAE network enhances features of different convolutional channels, the FFAE network improves segment features in various frequency domains, and the SFF network extracts domain-invariant features of diverse rotating components under varying working conditions. The model is validated using bearing fault data collected under different loads and planetary gear fault data obtained at varying speeds. Its diagnostic accuracy remains above 96.4%, and the diagnostic variance is controlled within 1.0%. The model has good interpretability for imbalanced sample domain-invariant features, providing an effective tool for interpretable transfer diagnosis in this compound engineering situation.
针对不平衡样本的可解释连体双注意增强转移复合诊断模型
智能转移诊断模型用于解决工程中旋转部件工作条件变化引起的特征漂移问题。然而,很少有模型能同时对旋转部件的多个不平衡样本进行转移诊断,而能直观增强领域不变特征,使其更具可解释性的模型更是少之又少。为了解决这些问题,我们提出了一种新颖的可解释连体双注意力增强非平衡样本转移复合诊断模型。该模型可同时诊断多个旋转部件,由通道特征注意增强(CFAE)网络、片段特征注意增强(FFAE)网络和连体特征融合(SFF)网络组成。CFAE 网络增强不同卷积通道的特征,FFAE 网络改进不同频域的片段特征,SFF 网络提取不同工作条件下不同旋转部件的域不变特征。利用在不同负载下采集的轴承故障数据和在不同转速下采集的行星齿轮故障数据,对该模型进行了验证。其诊断准确率保持在 96.4% 以上,诊断方差控制在 1.0% 以内。该模型对不平衡样本域不变特征具有良好的可解释性,为在这种复合工程情况下进行可解释的转移诊断提供了有效工具。
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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