One-dimensional convolutional neural network-based active feature extraction for fault detection and diagnosis of industrial processes and its understanding via visualization.

Journal: ISA transactions
Published Date:

Abstract

Feature extraction from process signals enables process monitoring models to be effective in industrial processes. Deep learning presents extensive possibilities for extracting abstract features from image and visual data. However, the main inputs of conventional deep neural networks are large images. To overcome this, a one-dimension convolution neural network-based model optimized by a reinforcement-learning-based neural architecture search, is proposed for multivariate processes control. The experimental results illustrate its predominance for detecting and recognizing process faults. Feature and network visualization are also implemented to explore the reasons for its outstanding performance. This research extends the applications of convolutional neural network based on one-dimension process signals in complex multivariate process control.

Authors

  • Shumei Chen
    School of Mechanical Engineering, Tongji University, 4800 CaoAn Road, 201804 Shanghai, PR China.
  • Jianbo Yu
    School of Mechanical Engineering, Tongji University, Shanghai 201804, China. Electronic address: jbyu@tongji.edu.cn.
  • Shijin Wang
    School of Economics and Management, Tongji University, 4800 CaoAn Road, 201804 Shanghai, PR China.