Login / Signup

CaFANet: Causal-Factors-Aware Attention Networks for Equipment Fault Prediction in the Internet of Things.

Zhenwen GuiShuaishuai HeYao LinXin NanXiaoyan YinChase Q Wu
Published in: Sensors (Basel, Switzerland) (2023)
Existing fault prediction algorithms based on deep learning have achieved good prediction performance. These algorithms treat all features fairly and assume that the progression of the equipment faults is stationary throughout the entire lifecycle. In fact, each feature has a different contribution to the accuracy of fault prediction, and the progress of equipment faults is non-stationary. More specifically, capturing the time point at which a fault first appears is more important for improving the accuracy of fault prediction. Moreover, the progress of the different faults of equipment varies significantly. Therefore, taking feature differences and time information into consideration, we propose a Ca usal- F actors- A ware Attention Net work, CaFANet , for equipment fault prediction in the Internet of Things. Experimental results and performance analysis confirm the superiority of the proposed algorithm over traditional machine learning methods with prediction accuracy improved by up to 15.3%.
Keyphrases
  • machine learning
  • deep learning
  • neural network
  • artificial intelligence
  • working memory
  • health information
  • healthcare
  • mass spectrometry