Deep convolution variational autoencoder network based transfer learning strategy for fault diagnosis

Bo She, Heng Zhang, Jun Wang
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Abstract

The successful application of traditional machine learning to mechanical fault diagnosis relies on two conditions: the same probability distribution of training data and testing data, and the data containing fault information has labels. However, it is difficult to obtain massive labeled data, and the change of mechanical operation conditions also results in inconsistent distribution of source domain data and target domain data, which makes the labeled data for training model possibly fail in classifying unlabeled data acquired under other conditions. Aiming at solving the above problems, a deep convolution variational autoencoder network is introduced, the pseudo-label information of small samples in target domain is predicted by using label propagation and data fusion methods, combining with the domain adaptability advantages of transfer learning theory, a novel diagnosis method based on transfer learning with deep convolution variational autoencoder (TL-DCVAEN) is presented. In addition, the spectrum data is used as the input of the model to reduce the dependence on artificial feature design and engineering experience. The experimental results indicate that the proposed diagnosis method is suitable for rolling bearing fault diagnosis under variable working conditions, and has better diagnostic performance and generalization.
基于深度卷积变分自编码器网络的故障诊断迁移学习策略
传统机器学习在机械故障诊断中的成功应用依赖于两个条件:训练数据和测试数据的概率分布相同,包含故障信息的数据有标签。然而,大量的标记数据难以获得,而且机械操作条件的变化也导致源领域数据和目标领域数据分布不一致,这使得用于训练模型的标记数据可能无法对在其他条件下获取的未标记数据进行分类。针对上述问题,提出了一种深度卷积变分自编码器网络,利用标签传播和数据融合方法对目标域小样本的伪标签信息进行预测,结合迁移学习理论的领域适应性优势,提出了一种基于深度卷积变分自编码器迁移学习的新型诊断方法(TL-DCVAEN)。此外,利用频谱数据作为模型的输入,减少了对人工特征设计和工程经验的依赖。实验结果表明,该诊断方法适用于变工况下的滚动轴承故障诊断,具有较好的诊断性能和通用性。
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