Fault Diagnosis Method of Rolling Bearings Under Different Working Conditions Based on Federated Feature Transfer Learning

Shouqiang Kang, Jiawei Yang, Yulin Sun, Yujing Wang, Qingyan Wang, V. I. Mikulovich
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Abstract

A rolling bearing fault diagnosis method based on the federated feature transfer learning is proposed for the low accuracy of the diagnosis model in the presence of large differences in data distribution under different working conditions, difficulty in obtaining labeled data and non-sharing of data among different users. This method performs wavelet transformation on the time domain vibration data of rolling bearings to obtain a time-frequency diagram. The priori labeled public data and the multi-user island private data are regarded as the source domain and the target domain. The multi-representation feature extraction structure is introduced to improve the original residual network. Based on an improved residual network and multi-representation features in the source domain and the target domain, every local model and a federated global model are constructed. Through verification of bearing data, the proposed method can establish an effective fault diagnosis model with high fault diagnosis accuracy. It can integrate the knowledge of isolated island data without sharing data among multiple users.
基于联邦特征迁移学习的滚动轴承不同工况故障诊断方法
针对不同工况下数据分布差异大、标记数据难以获取、不同用户间数据不共享等问题,提出了一种基于联邦特征迁移学习的滚动轴承故障诊断方法。该方法对滚动轴承时域振动数据进行小波变换,得到时频图。将先验标记的公共数据和多用户孤岛私有数据分别作为源域和目标域。引入多表示特征提取结构,对原有残差网络进行改进。基于改进的残差网络和源域和目标域的多表示特征,构建了每个局部模型和联合全局模型。通过对轴承数据的验证,该方法可以建立有效的故障诊断模型,具有较高的故障诊断精度。它可以集成孤岛数据的知识,而不需要在多个用户之间共享数据。
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