Skip navigation
  • 中文
  • English

DSpace CRIS

  • DSpace logo
  • Home
  • Research Outputs
  • Researchers
  • Organizations
  • Projects
  • Explore by
    • Research Outputs
    • Researchers
    • Organizations
    • Projects
  • Communities & Collections
  • SDGs
  • Sign in
  • 中文
  • English
  1. National Taiwan Ocean University Research Hub
  2. 工學院
  3. 系統工程暨造船學系
Please use this identifier to cite or link to this item: http://scholars.ntou.edu.tw/handle/123456789/26484
Title: Leveraging graph attention networks for enhanced latent defect detection in precision built-in spindle assembly lines
Authors: Li, Kuo-Hao
Wang, Chao-Nan
Tang, Yao-Chi 
Keywords: graph attention networks;defect detection;built-in spindles;quality control;deep learning
Issue Date: 2025
Publisher: SAGE PUBLICATIONS LTD
Journal Volume: 17
Journal Issue: 8
Source: ADVANCES IN MECHANICAL ENGINEERING
Abstract: 
This study introduces a novel approach employing Graph Attention Networks (GAT) to detect pre-installation defects in built-in spindles. Traditional quality control relies heavily on manual inspections and basic mechanical testing, which often miss subtle defects. Using vibration datasets from 13 spindles with identical specifications, this research applies a GAT-based diagnostic method, transforming vibration signals into graph representations. GAT's attention mechanism effectively extracts essential node and structural features, enabling early and accurate defect identification. Experimental results demonstrate that the proposed GAT model significantly outperforms conventional techniques such as k-nearest neighbors (KNN), Support Vector Machines (SVM), and Graph Convolutional Networks (GCN). By adding noise to simulate harsh operational conditions, the GAT model maintained superior clustering and classification performance, achieving 100% accuracy under noiseless conditions and exhibiting exceptional robustness even at a challenging -5 dB signal-to-noise ratio (SNR). Additionally, GAT effectively handles imbalanced datasets and displays strong generalization capabilities, underscoring its practical industrial potential. This research marks a notable advancement in spindle manufacturing quality control, highlighting promising future directions for deep learning in industrial diagnostics.
URI: http://scholars.ntou.edu.tw/handle/123456789/26484
ISSN: 1687-8132
DOI: 10.1177/16878132251370862
Appears in Collections:系統工程暨造船學系

Show full item record

Google ScholarTM

Check

Altmetric

Altmetric

Related Items in TAIR


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Explore by
  • Communities & Collections
  • Research Outputs
  • Researchers
  • Organizations
  • Projects
Build with DSpace-CRIS - Extension maintained and optimized by Logo 4SCIENCE Feedback