A cost-effective manufacturing process recognition approach based on deep transfer learning for CPS enabled shop-floor

Bufan Liu, Yingfeng Zhang, Jingxiang Lv, Arfan Majeed, Chun Hsien Chen, Dang Zhang

Research output: Contribution to journalArticlepeer-review

34 Scopus citations

Abstract

The rapid development of the industrial Internet of Things has promoted manufacturing to develop towards the cyber-physical system, of which highly accurate process recognition plays an important role in achieving proactive monitoring of intelligent manufacturing process. Compared to the traditional handcrafted feature-based method, deep model owns convenience in terms of extracting feature automatically for the recognition. However, training a deep model is time-consuming and also requires large-scale training samples. To solve these problems and obtain high accuracy in the meanwhile, a deep transfer learning-based manufacturing process recognition approach is proposed in this study. A pre-trained model based on a convolutional neural network is used to extract low dimensional features followed by a fine-tuning process to target the specific process recognition task. Experimental verification of two datasets was conducted to demonstrate this cost-effective method. The results showed the proposed method can get better accuracy with less training time and fewer training samples.

Original languageEnglish
Article number102128
JournalRobotics and Computer-Integrated Manufacturing
Volume70
DOIs
StatePublished - Aug 2021

Keywords

  • Convolutional neural network (CNN)
  • Cyber-physical systems (CPS)
  • Deep learning (DL)
  • Manufacturing process recognition
  • Transfer learning (TL)

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