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A novel domain generalization network with multidomain specific auxiliary classifiers for machinery fault diagnosis under unseen working conditions

机译:一种具有多域特定辅助分类器的新型域泛化网络,用于在看不见的工况下进行机械故障诊断

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摘要

? 2023The domain adaptation-based intelligent diagnosis approaches have achieved promising performance on diagnosis tasks under different working conditions. However, these methods rely on a premise that the target data are available in the model training phase. In real industries, collecting interest data from target machines in advance may be infeasible, which greatly restricts the practicality of intelligent diagnosis approaches in reality. To solve this issue, this study proposes a novel domain generalization network for machinery fault diagnosis where interest data are completely unavailable during model training. In the proposed network, multiple domain-specific auxiliary classifiers are firstly designed to effectively learn domain-specific features from each source domain, and then, a convolutional auto-encoder module is further constructed to map raw signals into a new feature space where the learned domain-specific features are removed. Meanwhile, with the features outputted by the convolutional auto-encoder, a domain-invariant classifier with inter-domain alignment strategy is designed to learn generalization diagnostic knowledge among different source domains, thereby performing diagnosis tasks under unseen conditions. Experiments on three practical rotary machinery datasets validate the effectiveness of the proposed network, showing that the proposed network is promising for fault diagnosis tasks in practical scenarios.
机译:?2023基于领域自适应的智能诊断方法在不同工况下的诊断任务上取得了可喜的性能。但是,这些方法依赖于一个前提,即目标数据在模型训练阶段可用。在实际行业中,提前从目标机器收集兴趣数据可能不可行,这极大地限制了智能诊断方法在现实中的实用性。为了解决这一问题,该文提出了一种新的领域泛化网络,用于在模型训练过程中完全无法获得兴趣数据的机械故障诊断。在所提出的网络中,首先设计了多个特定领域的辅助分类器,以有效地从每个源领域学习特定领域特征,然后进一步构建卷积自编码器模块,将原始信号映射到一个新的特征空间中,其中学习到的领域特定特征被移除。同时,利用卷积自编码器输出的特征,设计了一种具有域间对齐策略的域不变分类器,用于学习不同源域之间的泛化诊断知识,从而在看不见的条件下执行诊断任务。在3个实际旋转机械数据集上的实验验证了所提网络的有效性,表明所提网络在实际场景中具有广阔的故障诊断任务前景。

著录项

  • 来源
    《Reliability engineering & system safety》 |2023年第10期|1.1-1.13|共13页
  • 作者单位

    School of Rail Transportation Soochow University||Anhui Engineering Laboratory of Human Robot Integration System Equipment Anhui University;

    School of Rail Transportation Soochow UniversitySchool of Rail Transportation Soochow University||Anhui Engineering Laboratory of Human Robot Integration System Equipment Anhui University;

    ||School of Rail Transportation Soochow UniversityAnhui Engineering Laboratory of Human Robot Integration System Equipment Anhui University;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 英语
  • 中图分类
  • 关键词

    Auxiliary classifiers; Deep learning; Domain generalization; Machinery fault diagnosis;

    机译:辅助分类器;深度学习;领域泛化;机械故障诊断;
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