SensorSCAN: Self-supervised learning and deep clustering for fault diagnosis in chemical processes

被引:6
作者
Golyadkin, Maksim [1 ,2 ,4 ]
Pozdnyakov, Vitaliy [1 ,2 ,4 ]
Zhukov, Leonid [2 ]
Makarov, Ilya [1 ,3 ]
机构
[1] AIRI, Moscow, Russia
[2] HSE Univ, Moscow, Russia
[3] NUST MISiS, AI Ctr, Moscow, Russia
[4] 11 Pokrovsky Bulvar, Moscow 109028, Russia
基金
俄罗斯科学基金会;
关键词
Self-supervised learning; Deep clustering; Fault detection; Fault diagnosis; Industrial processes; Chemical processes; Sensor data; CANONICAL CORRELATION-ANALYSIS; NETWORK; MODEL; PLANT; PCA;
D O I
10.1016/j.artint.2023.104012
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Modern industrial facilities generate large volumes of raw sensor data during the production process. This data is used to monitor and control the processes and can be analyzed to detect and predict process abnormalities. Typically, the data has to be annotated by experts in order to be used in predictive modeling. However, manual annotation of large amounts of data can be difficult in industrial settings.In this paper, we propose SensorSCAN, a novel method for unsupervised fault detection and diagnosis, designed for industrial chemical process monitoring. We demonstrate our model's performance on two publicly available datasets of the Tennessee Eastman Process with various faults. The results show that our method significantly outperforms existing approaches (+0.2-0.3 TPR for a fixed FPR) and effectively detects most of the process faults without expert annotation. Moreover, we show that the model fine-tuned on a small fraction of labeled data nearly reaches the performance of a SOTA model trained on the full dataset. We also demonstrate that our method is suitable for real-world applications where the number of faults is not known in advance. The code is available at https:// github .com /AIRI -Institute /sensorscan.(c) 2023 Elsevier B.V. All rights reserved.
引用
收藏
页数:25
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共 100 条
  • [1] A new integrated on-line fuzzy clustering and segmentation methodology with adaptive PCA approach for process monitoring and fault detection and diagnosis
    Alaei, Hesam Komari
    Salahshoor, Karim
    Alaei, Hamed Komari
    [J]. SOFT COMPUTING, 2013, 17 (03) : 345 - 362
  • [2] Deep Clustering Bearing Fault Diagnosis Method Based on Local Manifold Learning of an Autoencoded Embedding
    An, Jing
    Ai, Ping
    Liu, Cong
    Xu, Sen
    Liu, Dakun
    [J]. IEEE ACCESS, 2021, 9 : 30154 - 30168
  • [3] Fault detection and diagnosis in process system using artificial intelligence-based cognitive technique
    Arunthavanathan, Rajeevan
    Khan, Faisal
    Ahmed, Salim
    Imtiaz, Syed
    Rusli, Risza
    [J]. COMPUTERS & CHEMICAL ENGINEERING, 2020, 134
  • [4] Brown TB, 2020, Arxiv, DOI arXiv:2005.14165
  • [5] Weighted and constrained possibilistic C-means clustering for online fault detection and isolation
    Bahrampour, Soheil
    Moshiri, Behzad
    Salahshoor, Karim
    [J]. APPLIED INTELLIGENCE, 2011, 35 (02) : 269 - 284
  • [6] Revision of the Tennessee Eastman Process Model
    Bathelt, Andreas
    Ricker, N. Lawrence
    Jelali, Mohieddine
    [J]. IFAC PAPERSONLINE, 2015, 48 (08): : 309 - 314
  • [7] One step forward for smart chemical process fault detection and diagnosis
    Bi, Xiaotian
    Qin, Ruoshi
    Wu, Deyang
    Zheng, Shaodong
    Zhao, Jinsong
    [J]. COMPUTERS & CHEMICAL ENGINEERING, 2022, 164
  • [8] A novel orthogonal self-attentive variational autoencoder method for interpretable chemical process fault detection and identification
    Bi, Xiaotian
    Zhao, Jinsong
    [J]. PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2021, 156 : 581 - 597
  • [9] Bruijn B., 2016, SENSORNETS 2016 P 5, P185, DOI [10.5220/0005637901850195, DOI 10.5220/0005637901850195]
  • [10] Locally Consistent Concept Factorization for Document Clustering
    Cai, Deng
    He, Xiaofei
    Han, Jiawei
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2011, 23 (06) : 902 - 913