• Medientyp: E-Artikel
  • Titel: Abnormality Detection of Blast Furnace Tuyere Based on Knowledge Distillation and a Vision Transformer
  • Beteiligte: Song, Chuanwang; Zhang, Hao; Wang, Yuanjun; Wang, Yuhui; Hu, Keyong
  • Erschienen: MDPI AG, 2023
  • Erschienen in: Applied Sciences
  • Sprache: Englisch
  • DOI: 10.3390/app131810398
  • ISSN: 2076-3417
  • Entstehung:
  • Anmerkungen:
  • Beschreibung: <jats:p>The blast furnace tuyere is a key position in hot metal production and is primarily observed to assess the internal state of the furnace. However, detecting abnormal tuyere conditions has relied heavily on manual judgment, leading to certain limitations. We proposed a tuyere abnormality detection model based on knowledge distillation and a vision transformer (ViT) to address this issue. In this approach, ResNet50 is employed as the Teacher model to distill knowledge into the Student model, ViT. Firstly, we introduced spatial attention modules to enhance the model’s perception and feature-extraction capabilities for different image regions. Furthermore, we simplified the depth of the ViT and improved its self-attention mechanism to alleviate training losses. In addition, we employed the knowledge distillation strategy to achieve model lightweighting and enhance the model’s generalization capability. Finally, we evaluate the model’s performance in tuyere abnormality detection and compare it with other classification methods such as VGG-19, ResNet-101, and ResNet-50. Experimental results showed that our model achieved a classification accuracy of 97.86% on a tuyere image dataset from a company, surpassing the original ViT model by 1.12% and the improved ViT model without knowledge distillation by 0.34%. Meanwhile, the model achieved a competitive classification accuracy of 90.31% and 77.65% on the classical fine-grained image datasets, Stanford Dogs and CUB-200-2011, respectively, comparable to other classification models.</jats:p>
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