跳到主要导航 跳到搜索 跳到主要内容

Global contextual feature aggregation networks with multiscale attention mechanism for mechanical fault diagnosis under non-stationary conditions

  • Yadong Xu
  • , Yuejian Chen
  • , Hengcheng Zhang
  • , Ke Feng
  • , Yulin Wang
  • , Chunsheng Yang
  • , Qing Ni
  • Nanjing University of Science and Technology
  • Southeast University, Nanjing
  • Tongji University
  • Innovation Laboratory for Sciences and Technologies of Energy Materials of Fujian Province (IKKEM)
  • University of Technology Sydney
  • National Research Council of Canada

科研成果: 期刊稿件文章同行评审

36 引用 (Scopus)

摘要

In recent years, the rapid development of convolutional neural networks (CNNs) has significantly advanced the progress of intelligent fault diagnosis. Most currently-available CNN-based diagnostic models are built on the premise that the monitored machine operates under stable conditions. However, in real-world scenarios, rotary machinery usually operates at varying speeds, making the fault-related pulse features susceptible to noise oversaturation. To extract discriminative features from mechanical signals under non-stationary conditions, a global contextual feature aggregation network (GCFAN) is developed in this paper. To begin with, a global contextual module (GCM) is embedded in the CNN architecture to explore multimodal features. Then, a multiscale attention module (MSAM) is introduced to guide the model to focus on global and local discriminative information. Further, a multiscale feature enhancement module (MFEM) is established to enlarge the receptive field and eliminate useless features. Finally, the GCFAN architecture is constructed based on these improvements. To achieve favourable diagnostic results under fluctuating variable speed conditions, we apply the label smoothing algorithm and the AMSGrad algorithm to assist the training of the model. Two case studies using the benchmark variable speed bearing dataset and the HF-MS variable speed gearbox dataset were carried out to test the practicality of the developed approach. Experimental results demonstrated that the developed GCFAN performs better than seven state-of-the-art approaches.

源语言英语
文章编号110724
期刊Mechanical Systems and Signal Processing
203
DOI
出版状态已出版 - 15 11月 2023
已对外发布

学术指纹

探究 'Global contextual feature aggregation networks with multiscale attention mechanism for mechanical fault diagnosis under non-stationary conditions' 的科研主题。它们共同构成独一无二的指纹。

引用此