SCI和EI收录∣中国化工学会会刊

Chinese Journal of Chemical Engineering ›› 2025, Vol. 84 ›› Issue (8): 96-106.DOI: 10.1016/j.cjche.2025.04.011

Previous Articles     Next Articles

Process fault root cause diagnosis through state evolution mapping based on temporal unit shapelets

Zhenhua Yu1, Guan Wang2, Qingchao Jiang1, Xuefeng Yan1   

  1. 1. Key Laboratory of Smart Manufacturing in Energy Chemical Process, Ministry of Education, East China University of Science and Technology, Shanghai 200237, China;
    2. State Key Laboratory of Bioreactor Engineering, East China University of Science and Technology, Shanghai 200237, China
  • Received:2024-09-03 Revised:2025-04-18 Accepted:2025-04-20 Online:2025-05-14 Published:2025-08-28
  • Contact: Qingchao Jiang,E-mail:qchjiang@ecust.edu.cn
  • Supported by:
    The authors gratefully acknowledge the support from the following foundations: the National Natural Science Foundation of China (62322309, 62433004), Shanghai Science and Technology Innovation Action Plan (23S41900500), and Shanghai Pilot Program for Basic Research (22TQ1400100-16).

Process fault root cause diagnosis through state evolution mapping based on temporal unit shapelets

Zhenhua Yu1, Guan Wang2, Qingchao Jiang1, Xuefeng Yan1   

  1. 1. Key Laboratory of Smart Manufacturing in Energy Chemical Process, Ministry of Education, East China University of Science and Technology, Shanghai 200237, China;
    2. State Key Laboratory of Bioreactor Engineering, East China University of Science and Technology, Shanghai 200237, China
  • 通讯作者: Qingchao Jiang,E-mail:qchjiang@ecust.edu.cn
  • 基金资助:
    The authors gratefully acknowledge the support from the following foundations: the National Natural Science Foundation of China (62322309, 62433004), Shanghai Science and Technology Innovation Action Plan (23S41900500), and Shanghai Pilot Program for Basic Research (22TQ1400100-16).

Abstract: Accurate fault root cause diagnosis is essential for ensuring stable industrial production. Traditional methods, which typically rely on the entire time series and overlook critical local features, can lead to biased inferences about causal relationships, thus hindering the accurate identification of root cause variables. This study proposed a shapelet-based state evolution graph for fault root cause diagnosis (SEG-RCD), which enables causal inference through the analysis of the important local features. First, the regularized autoencoder and fault contribution plot are used to identify the fault onset time and candidate root cause variables, respectively. Then, the most representative shapelets were extracted to construct a state evolution graph. Finally, the propagation path was extracted based on fault unit shapelets to pinpoint the fault root cause variable. The SEG-RCD can reduce the interference of noncausal information, enhancing the accuracy and interpretability of fault root cause diagnosis. The superiority of the proposed SEG-RCD was verified through experiments on a simulated penicillin fermentation process and an actual one.

Key words: Root cause diagnosis, Neural networks, Shapelet, Fermentation, Bioprocess

摘要: Accurate fault root cause diagnosis is essential for ensuring stable industrial production. Traditional methods, which typically rely on the entire time series and overlook critical local features, can lead to biased inferences about causal relationships, thus hindering the accurate identification of root cause variables. This study proposed a shapelet-based state evolution graph for fault root cause diagnosis (SEG-RCD), which enables causal inference through the analysis of the important local features. First, the regularized autoencoder and fault contribution plot are used to identify the fault onset time and candidate root cause variables, respectively. Then, the most representative shapelets were extracted to construct a state evolution graph. Finally, the propagation path was extracted based on fault unit shapelets to pinpoint the fault root cause variable. The SEG-RCD can reduce the interference of noncausal information, enhancing the accuracy and interpretability of fault root cause diagnosis. The superiority of the proposed SEG-RCD was verified through experiments on a simulated penicillin fermentation process and an actual one.

关键词: Root cause diagnosis, Neural networks, Shapelet, Fermentation, Bioprocess