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Ensemble sparse supervised model for bearing fault diagnosis in smart manufacturing

机译:智能制造中轴承故障诊断的集合稀疏监督模型

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摘要

Machinery fault diagnosis is of great significance to improve the reliability of smart manufacturing. Deep learning based fault diagnosis methods have achieved great success. However, the features extracted by different models may vary resulting in ambiguous representation of the data, and even wasted time with manually selecting the optimal hyperparameters. To solve the problems, this paper proposes a new framework named Ensemble Sparse Supervised Model (ESSM), in which a typical deep learning model is treated as two phases of feature learning and model learning. In the feature learning phase, the original data is represented to be a feature matrix as non-redundant as possible by applying sparse filtering. Then, the feature matrix is fed into the model learning phase. Regularization, dropout and rectified linear unit (ReLU) are used in the model's neurons and layers to build a sparse deep neural network. Finally, the output of the sparse deep neural network provides feedback to the first phase to obtain better sparse features. In the proposed method, hyperparameters need to be pre-specified and a python library of talos is employed to finish the process automatically. The proposed method is verified using the bearing data provided by Case Western Reserve University. The result demonstrates that the proposed method can capture the effective pattern of data with the help of sparse constraints and simultaneously provide convenience for the operators with assuring performance.
机译:机械故障诊断是提高智能制造的可靠性的重要意义。基于深度学习的故障诊断方法取得了巨大的成功。然而,由不同模型提取的特征可以变化导致数据的模糊表示,甚至在手动选择最佳的超参数时浪费时间。为了解决问题,本文提出了一个名为Ensemble稀疏监督模型(ESSM)的新框架,其中典型的深度学习模型被视为特征学习和模型学习的两个阶段。在特征学习阶段中,原始数据被表示为可以通过应用稀疏过滤作为不冗余的特征矩阵。然后,将特征矩阵馈入模型学习阶段。正规化,辍学和整流的线性单元(Relu)用于模型的神经元和层中以构建稀疏的深神经网络。最后,稀疏深神经网络的输出为第一阶段提供了反馈,以获得更好的稀疏特征。在所提出的方法中,需要预先指定的超参数,并且使用踝关节的Python库自动完成过程。使用案例西部储备大学提供的轴承数据来验证所提出的方法。结果表明,借助于稀疏约束,所提出的方法可以捕获有效数据模式,并同时为操作员提供确保性能的便利性。

著录项

  • 来源
    《Robotics and Computer-Integrated Manufacturing》 |2020年第10期|101920.1-101920.11|共11页
  • 作者单位

    School of Mechanical and Transportation Engineering China University of Petroleum Beijing 102249 China;

    School of Mechanical and Transportation Engineering China University of Petroleum Beijing 102249 China;

    School of Mechanical and Transportation Engineering China University of Petroleum Beijing 102249 China;

    School of Mechanical and Transportation Engineering China University of Petroleum Beijing 102249 China;

    Department of Mechanical and Aerospace Engineering Case Western Reserve University Cleveland OH 44106 United States;

  • 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 eng
  • 中图分类
  • 关键词

    Sparse representation; Deep learning; Fault diagnosis;

    机译:稀疏表示;深度学习;故障诊断;

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