New contributions to non-linear process monitoring through kernel partial least squares

被引:26
作者
Godoy, Jose L. [1 ]
Zumoffen, David A. [2 ]
Vega, Jorge R. [1 ]
Marchetti, Jacinto L. [1 ]
机构
[1] Inst Technol Dev Chem Ind INTEC CONICET UNL, RA-3000 Santa Fe, Argentina
[2] French Argentine Int Ctr Informat & Syst Sci CIFA, Rosario, Santa Fe, Argentina
关键词
KPLS modeling; Fault detection; Fault diagnosis; Prediction risk assessment; Non-linear processes; FAULT-DETECTION; DIAGNOSIS; PREDICTION; REGRESSION; PROJECTION; SELECTION;
D O I
10.1016/j.chemolab.2014.04.001
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The kernel partial least squares (KPLS) method was originally focused on soft-sensor calibration for predicting online quality attributes. In this work, an analysis of the KPLS-based modeling technique and its application to non-linear process monitoring are presented. To this effect, the measurement decomposition, the development of new specific statistics acting on non-overlapped domains, and the contribution analysis are addressed for purposes of fault detection, diagnosis, and prediction risk assessment. Some practical insights for synthesizing the models are also given, which are related to an appropriate order selection and the adoption of the kernel function parameter. A proper combination of scaled statistics allows the definition of an efficient detection index for monitoring a non-linear process. The effectiveness of the proposed methods is confirmed by using simulation examples. (C) 2014 Elsevier B.V. All rights reserved.
引用
收藏
页码:76 / 89
页数:14
相关论文
共 34 条
[21]   Mutual information-induced interval selection combined with kernel partial least squares for near-infrared spectral calibration [J].
Tan, Chao ;
Li, Menglong .
SPECTROCHIMICA ACTA PART A-MOLECULAR AND BIOMOLECULAR SPECTROSCOPY, 2008, 71 (04) :1266-1273
[22]   A review of process fault detection and diagnosis Part III: Process history based methods [J].
Venkatasubramanian, V ;
Rengaswamy, R ;
Kavuri, SN ;
Yin, K .
COMPUTERS & CHEMICAL ENGINEERING, 2003, 27 (03) :327-346
[23]   An in silico method for screening nicotine derivatives as cytochrome P450 2A6 selective inhibitors based on kernel partial least squares [J].
Wang, Yonghua ;
Li, Yan ;
Wang, Bin .
INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2007, 8 (02) :166-179
[24]   Influence of water on prediction of composition and quality factors: the Aquaphotomics of low moisture agricultural materials [J].
Williams, Phil .
JOURNAL OF NEAR INFRARED SPECTROSCOPY, 2009, 17 (06) :315-328
[25]   Condition monitoring of centrifuge vibrations using kernel PLS [J].
Willis, A. J. .
COMPUTERS & CHEMICAL ENGINEERING, 2010, 34 (03) :349-353
[26]   PLS-regression:: a basic tool of chemometrics [J].
Wold, S ;
Sjöström, M ;
Eriksson, L .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2001, 58 (02) :109-130
[27]   Reconstruction-based fault identification using a combined index [J].
Yue, HH ;
Qin, SJ .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2001, 40 (20) :4403-4414
[28]   Nonlinear multivariate quality estimation and prediction based on kernel partial least squares [J].
Zhang, Xi ;
Yan, Weiwu ;
Shao, Huihe .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2008, 47 (04) :1120-1131
[29]   On-line batch process monitoring using hierarchical kernel partial least squares [J].
Zhang, Yingwei ;
Hu, Zhiyong .
CHEMICAL ENGINEERING RESEARCH & DESIGN, 2011, 89 (10A) :2078-2084
[30]   Process data modeling using modified kernel partial least squares [J].
Zhang, Yingwei ;
Teng, Yongdong .
CHEMICAL ENGINEERING SCIENCE, 2010, 65 (24) :6353-6361