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Multiscale domain adaption models and their application in fault transfer diagnosis of planetary gearboxes

机译:多尺度域适应模型及其在行星齿轮箱故障诊断中的应用

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摘要

In recent years, various deep domain adaption (DDA) models, such as deep domain confusion (DDC) and deep adaption network (DAN), are proposed. These models can adapt a trained model in the source domain to new classification tasks in the target domain. However, these classical DDA models suffer from some inherent drawbacks. For example, traditional DDA models can output only one transfer feature (TF) with high dimension and fixed scales, thus possibly losing important information while performing domain confusion operation. Multiscale domain adaption (MSDA) is proposed in this paper to remold and improve the classical DDA models to solve the aforementioned problems. MSDA is a universally applicable strategy that can be embedded into most existing classical DDA models. An MSDA block is designed and constructed on the basis of multiscale convolution networks to replace the last convolutional layer of the original DDA model. The MSDA block has four parallel pipelines consisting of multiscale convolutional and global average pooling operations. Therefore, MSDA can extract more domain-invariant features than the original feature extractor, meanwhile the four low-dimension TFs can simplify the calculation of domain confusion losses. The four TFs are concatenated into a feature vector, and then it is input into the top classifier for fault identification. MSDA can be effectively applied to five classical DDA models and enhance their abilities of domain adaption. The effectiveness and advantage of the proposed MSDA are verified through 18 fault transfer diagnosis tasks of planetary gearboxes.
机译:近年来,提出了各种深域适应(DDA)模型,例如深域混淆(DDC)和深度适应网络(DAN)。这些模型可以在源域中调整训练模型到目标域中的新分类任务。然而,这些古典DDA模型遭受了一些固有的缺点。例如,传统的DDA模型可以仅输出具有高维和固定尺度的一个传输功能(TF),因此在执行域混淆操作时可能会失去重要信息。本文提出了多尺度域适应(MSDA)以逐次恢复和改进古典DDA模型以解决上述问题。 MSDA是一种普遍适用的策略,可以嵌入到最现有的经典DDA模型中。在多尺度卷积网络的基础上设计和构建了MSDA块以取代原始DDA模型的最后一个卷积层。 MSDA块具有四个并行管道,包括多尺度卷积和全局平均水平汇集操作。因此,MSDA可以提取比原始特征提取器更多的域不变的特征,同时四个低维TFS可以简化域混淆损耗的计算。四个TFS被连接到特征向量中,然后将其输入到顶部分类器以进行故障识别。 MSDA可以有效地应用于五种古典DDA模型,并增强了域适应的能力。通过行星齿轮箱的18个故障转移诊断任务验证了所提出的MSDA的有效性和优势。

著录项

  • 来源
    《Engineering Applications of Artificial Intelligence》 |2021年第9期|104383.1-104383.11|共11页
  • 作者单位

    State Key Laboratory of Mechanical Transmission Chongqing University Chongqing 400044 China College of Mechanical and Vehicle Engineering Chongqing University Chongqing 400044 China;

    State Key Laboratory of Mechanical Transmission Chongqing University Chongqing 400044 China College of Mechanical and Vehicle Engineering Chongqing University Chongqing 400044 China;

    State Key Laboratory of Mechanical Transmission Chongqing University Chongqing 400044 China;

    State Key Laboratory of Mechanical Transmission Chongqing University Chongqing 400044 China College of Mechanical and Vehicle Engineering Chongqing University Chongqing 400044 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multiscale domain adaption; Multiscale feature; Gear fault diagnosis; Multiscale convolution; Wind turbine;

    机译:多尺度域适应;多尺度功能;齿轮故障诊断;多尺度卷积;风力涡轮机;

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