Kernel principal component analysis with reduced complexity for nonlinear dynamic process monitoring

被引:7
|
作者
Ines Jaffel
Okba Taouali
Mohamed Faouzi Harkat
Hassani Messaoud
机构
[1] Laboratory of Automatic Signal and Image Processing,
[2] National School of Engineers of Monastir,undefined
[3] University of Monastir,undefined
[4] Institute of electronics,undefined
[5] University BadjiMokhtar- Annaba,undefined
关键词
KPCA; RKPCA; SVD; Fault detection; Fault isolation; Process monitoring;
D O I
暂无
中图分类号
学科分类号
摘要
This paper proposes a new reduced kernel method for monitoring nonlinear dynamic systems on reproducing kernel Hilbert space (RKHS). Here, the proposed method is a concatenation of two techniques proposed in our previous studies, the reduced kernel principal component (RKPCA) Taouali et al. (Int J Adv Manuf Technol, 2015) and the singular value decomposition-kernel principal component (SVD-KPCA) (Elaissi et al. (ISA Trans, 52(1), 96–104, 2013)) The proposed method is entitled SVD-RKPCA. It consists at first to identify an implicit RKPCA model, that approaches “properly” the system behavior, and after that to update this RKPCA model by SVD of an incremented and decremented kernel matrix using a moving data window. The proposed SVD-RKPCA has been applied successfully for monitoring of a continuous stirred tank reactor (CSTR) as well as a Tennessee Eastman process (TEP).
引用
收藏
页码:3265 / 3279
页数:14
相关论文
共 50 条
  • [11] Nonlinear dynamic process monitoring using deep dynamic principal component analysis
    Li, Simin
    Yang, Shuanghua
    Cao, Yi
    Ji, Zuzen
    [J]. SYSTEMS SCIENCE & CONTROL ENGINEERING, 2022, 10 (01) : 55 - 64
  • [12] Dynamic nonlinear process monitoring based on dynamic correlation variable selection and kernel principal component regression
    Li, Zhichao
    Tian, Li
    Jiang, Qingchao
    Yan, Xuefeng
    [J]. Journal of the Franklin Institute, 2022, 359 (09) : 4513 - 4539
  • [13] Dynamic nonlinear process monitoring based on dynamic correlation variable selection and kernel principal component regression
    Li, Zhichao
    Tian, Li
    Jiang, Qingchao
    Yan, Xuefeng
    [J]. JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS, 2022, 359 (09): : 4513 - 4539
  • [14] Variable window adaptive Kernel Principal Component Analysis for nonlinear nonstationary process monitoring
    Ben Khediri, Issam
    Limam, Mohamed
    Weihs, Claus
    [J]. COMPUTERS & INDUSTRIAL ENGINEERING, 2011, 61 (03) : 437 - 446
  • [15] Uncertain Nonlinear Process Monitoring Using Interval Ensemble Kernel Principal Component Analysis
    Wang, Xianrui
    Zhao, Guoxin
    Liu, Yu
    Yang, Shujie
    [J]. JOURNAL OF ADVANCED COMPUTATIONAL INTELLIGENCE AND INTELLIGENT INFORMATICS, 2021, 25 (01) : 101 - 109
  • [16] Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring
    Guo, Lingling
    Wu, Ping
    Gao, Jinfeng
    Lou, Siwei
    [J]. IEEE ACCESS, 2019, 7 : 47550 - 47563
  • [17] Research on nonlinear process monitoring and fault diagnosis based on kernel principal component analysis
    He, Fei
    Li, Min
    Yang, Jianhong
    Xu, Jinwu
    [J]. DAMAGE ASSESSMENT OF STRUCTURES VIII, 2009, 413-414 : 583 - 590
  • [18] Nonlinear dynamic principal component analysis for on-line process monitoring and diagnosis
    Lin, WL
    Qian, Y
    Li, XX
    [J]. COMPUTERS & CHEMICAL ENGINEERING, 2000, 24 (2-7) : 423 - 429
  • [19] Nonlinear Chemical Process Monitoring using Decentralized Kernel Principal Component Analysis and Bayesian Inference
    Cang, Wentao
    Fu, Yujia
    Xie, Li
    Tao, Hongfeng
    Yang, Huizhong
    [J]. 2017 11TH ASIAN CONTROL CONFERENCE (ASCC), 2017, : 1487 - 1492
  • [20] On-line nonlinear process monitoring using kernel principal component analysis and neural network
    Zhao, Zhong-Gai
    Liu, Fei
    [J]. ADVANCES IN NEURAL NETWORKS - ISNN 2006, PT 3, PROCEEDINGS, 2006, 3973 : 945 - 950