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Main Authors: Gan, Mengjie, Lian, Penglong, Su, Zhiheng, Zhang, Jiyang, Huang, Jialong, Wang, Benhao, Zou, Jianxiao, Fan, Shicai
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.19642
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author Gan, Mengjie
Lian, Penglong
Su, Zhiheng
Zhang, Jiyang
Huang, Jialong
Wang, Benhao
Zou, Jianxiao
Fan, Shicai
author_facet Gan, Mengjie
Lian, Penglong
Su, Zhiheng
Zhang, Jiyang
Huang, Jialong
Wang, Benhao
Zou, Jianxiao
Fan, Shicai
contents Industrial equipment fault diagnosis often encounter challenges such as the scarcity of fault data, complex operating conditions, and varied types of failures. Signal analysis, data statistical learning, and conventional deep learning techniques face constraints under these conditions due to their substantial data requirements and the necessity for transfer learning to accommodate new failure modes. To effectively leverage information and extract the intrinsic characteristics of faults across different domains under limited sample conditions, this paper introduces a fault diagnosis approach employing Multi-Scale Graph Convolution Filtering (MSGCF). MSGCF enhances the traditional Graph Neural Network (GNN) framework by integrating both local and global information fusion modules within the graph convolution filter block. This advancement effectively mitigates the over-smoothing issue associated with excessive layering of graph convolutional layers while preserving a broad receptive field. It also reduces the risk of overfitting in few-shot diagnosis, thereby augmenting the model's representational capacity. Experiments on the University of Paderborn bearing dataset (PU) demonstrate that the MSGCF method proposed herein surpasses alternative approaches in accuracy, thereby offering valuable insights for industrial fault diagnosis in few-shot learning scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2405_19642
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Few-shot fault diagnosis based on multi-scale graph convolution filtering for industry
Gan, Mengjie
Lian, Penglong
Su, Zhiheng
Zhang, Jiyang
Huang, Jialong
Wang, Benhao
Zou, Jianxiao
Fan, Shicai
Artificial Intelligence
Industrial equipment fault diagnosis often encounter challenges such as the scarcity of fault data, complex operating conditions, and varied types of failures. Signal analysis, data statistical learning, and conventional deep learning techniques face constraints under these conditions due to their substantial data requirements and the necessity for transfer learning to accommodate new failure modes. To effectively leverage information and extract the intrinsic characteristics of faults across different domains under limited sample conditions, this paper introduces a fault diagnosis approach employing Multi-Scale Graph Convolution Filtering (MSGCF). MSGCF enhances the traditional Graph Neural Network (GNN) framework by integrating both local and global information fusion modules within the graph convolution filter block. This advancement effectively mitigates the over-smoothing issue associated with excessive layering of graph convolutional layers while preserving a broad receptive field. It also reduces the risk of overfitting in few-shot diagnosis, thereby augmenting the model's representational capacity. Experiments on the University of Paderborn bearing dataset (PU) demonstrate that the MSGCF method proposed herein surpasses alternative approaches in accuracy, thereby offering valuable insights for industrial fault diagnosis in few-shot learning scenarios.
title Few-shot fault diagnosis based on multi-scale graph convolution filtering for industry
topic Artificial Intelligence
url https://arxiv.org/abs/2405.19642