Hybrid Probabilistic Slow Feature Analysis of Continuous and Binary Data for Dynamic Process Monitoring

被引:3
|
作者
Chen, Junhao [1 ,2 ]
Song, Pengyu [1 ]
Zhao, Chunhui [1 ]
Xie, Min [2 ]
机构
[1] Zhejiang Univ, Coll Control Sci & Engn, State Key Lab Ind Control Technol, Hangzhou 310027, Peoples R China
[2] City Univ Hong Kong, Dept Syst Engn, Hong Kong, Peoples R China
基金
中国国家自然科学基金;
关键词
Probabilistic logic; Process monitoring; Correlation; Feature extraction; Analytical models; Data models; Principal component analysis; Covariance matrices; Process control; Kalman filters; Continuous and binary variables (BVs); dynamic latent variable (DLV) model; expectation-maximization (EM) algorithm; probabilistic slow feature (SF) analysis; process monitoring; STATIONARY; ANALYTICS;
D O I
10.1109/TSMC.2024.3462755
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Industrial process data are usually high-dimensional with dynamic characteristics, and a mix of continuous and binary quantities. However, current dynamic latent variable (DLV) methods primarily focus on analyzing continuous variables (CVs), overlooking the prevalence and significance of binary variables (BVs). BVs often serve as control references, indicating operating conditions or specific states and influencing the behavior of CVs. Integrating BVs into DLV models is crucial for elucidating the correspondence between CVs and BVs and uncovering the real operating patterns of the system. The main challenge lies in effectively accommodating the statistical heterogeneity exhibited by CVs and BVs, while comprehensively investigating their contemporaneous and temporal dependencies. To address this challenge, this study proposes a novel DLV model called hybrid probabilistic slow feature analysis (HPSFA). The HPSFA algorithm is specifically designed to extract slow features (SFs) from CVs while incorporating supervision from BVs. To efficiently infer posterior distributions of SFs, a variational recursive filter (VRF) is developed using the local approximation method, providing closed-form posterior estimations. Leveraging the VRF, an efficient expectation-maximization algorithm is proposed for parameter estimation. For process monitoring, three statistics are designed based on prediction or reconstruction errors, which are separated from dynamic variations and exhibit reduced variability. This reduction in variability enables the definition of narrower control regions while maintaining the desired confidence level. The HPSFA method is thoroughly evaluated through both simulated and real industrial case studies to demonstrate its validity and superior performance over existing approaches. The experimental results show that HPSFA timely detects both static and dynamic anomalies of the hybrid variables, and achieves the highest-fault detection rate (85.89%) while maintaining a considerably low-false alarm rate (2.67%) in the practical industrial case.
引用
收藏
页码:7848 / 7860
页数:13
相关论文
共 50 条
  • [21] Assessment of process operating performance with supervised probabilistic slow feature analysis
    Chu, Fei
    Hao, Li-li
    Shang, Chao
    Liu, Yan
    Wang, Fu-li
    JOURNAL OF PROCESS CONTROL, 2023, 124 : 152 - 165
  • [22] Hybrid variable monitoring: An unsupervised process monitoring framework with binary and continuous variables
    Wang, Min
    Zhou, Donghua
    Chen, Maoyin
    AUTOMATICA, 2023, 147
  • [23] Improved manifold sparse slow feature analysis for process monitoring
    Saafan, Hussein
    Zhu, Qinqin
    COMPUTERS & CHEMICAL ENGINEERING, 2022, 164
  • [24] Dynamic Modeling of Gross Errors via Probabilistic Slow Feature Analysis Applied to a Mining Slurry Preparation Process
    Shang, Chao
    Huang, Biao
    Lu, Yaojie
    Yang, Fan
    Huang, Dexian
    IFAC PAPERSONLINE, 2016, 49 (20): : 25 - 30
  • [25] Dynamic system modelling and process monitoring based on long-term dependency slow feature analysis
    Gao, Xinrui
    Shardt, Yuri A. W.
    JOURNAL OF PROCESS CONTROL, 2021, 105 : 27 - 47
  • [26] Quality-relevant dynamic process monitoring based on mutual information multiblock slow feature analysis
    Zheng, Haiyong
    Jiang, Qingchao
    Yan, Xuefeng
    JOURNAL OF CHEMOMETRICS, 2019, 33 (04)
  • [27] Identification of robust probabilistic slow feature regression model for process data contaminated with outliers
    Fan, Lei
    Kodamana, Hariprasad
    Huang, Biao
    CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2018, 173 : 1 - 13
  • [28] Adaptive monitoring for multimode nonstationary processes using cointegration analysis and probabilistic slow feature analysis
    Zhang, Jingxin
    Wang, Min
    Xu, Xu
    Zhou, Donghua
    Hong, Xia
    CONTROL ENGINEERING PRACTICE, 2025, 156
  • [29] Belief Propagation for Probabilistic Slow Feature Analysis
    Omori, Toshiaki
    Sekiguchi, Tomoki
    Okada, Masato
    JOURNAL OF THE PHYSICAL SOCIETY OF JAPAN, 2017, 86 (08)
  • [30] Wasserstein local slow feature analysis and its application to process monitoring
    Fu, Yuanjian
    Wu, Zhichao
    Luo, Chaomin
    Xu, Xue
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (09)