Semi-supervised dynamic latent variable modeling: I/O probabilistic slow feature analysis approach

被引:38
作者
Fan, Lei [1 ]
Kodamana, Hariprasad [2 ]
Huang, Biao [1 ]
机构
[1] Univ Alberta, Dept Chem & Mat Engn, Edmonton, AB T6G 2G6, Canada
[2] Indian Inst Technol Delhi, Dept Chem Engn, New Delhi 110016, India
基金
加拿大自然科学与工程研究理事会;
关键词
probabilistic slow feature analysis; inferential models; semi-supervised modeling; expectation-maximization; MISSING DATA; SYSTEM-IDENTIFICATION; COMPONENT ANALYSIS; LINEAR-REGRESSION; PLS; UNCERTAINTY; INTEGRATION; PREDICTION; ALGORITHM; STATE;
D O I
10.1002/aic.16481
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Modeling of high dimensional dynamic data is a challenging task. The high dimensionality problem in process data is usually accounted for using latent variable models. Probabilistic slow feature analysis (PSFA) is an example of such an approach that accounts for high dimensionality while simultaneously capturing the process dynamics. However, PSFA also suffers from a drawback that it cannot use output information when determining the latent slow features. To address this lacunae, extension of the PSFA by incorporating outputs, resulting in Input-Output PSFA (IOPSFA) is proposed. IOPSFA can use both input and output information for extracting latent variables. Hence, inferential models based on IOPSFA are expected to have better predictive ability. The efficacy of the proposed approach with an industrial and a laboratory scale soft sensing case studies that have both complete and incomplete output measurements is evaluated, respectively. (c) 2018 American Institute of Chemical Engineers AIChE J, 65: 964-979, 2019
引用
收藏
页码:964 / 979
页数:16
相关论文
共 59 条
[1]   Applications of maximum likelihood principal component analysis: incomplete data sets and calibration transfer [J].
Andrews, DT ;
Wentzell, PD .
ANALYTICA CHIMICA ACTA, 1997, 350 (03) :341-352
[2]  
[Anonymous], 2002, Principal components analysis
[3]  
[Anonymous], 2007, IFAC P
[4]  
[Anonymous], 2006, COMPUTER SCI U WISCO
[5]   Dealing with missing data in MSPC: several methods, different interpretations, some examples [J].
Arteaga, F ;
Ferrer, A .
JOURNAL OF CHEMOMETRICS, 2002, 16 (8-10) :408-418
[6]   Multiscale Bayesian rectification of data from linear steady-state and dynamic systems without accurate models [J].
Bakshi, BR ;
Nounou, MN ;
Goel, PK ;
Shen, XT .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2001, 40 (01) :261-274
[7]  
Bishop Christopher M, 2006, PATTERN RECOGNITION, DOI DOI 10.18637/JSS.V017.B05
[8]  
Butler R.M., 1991, Thermal Recovery of Oil and Bitumen
[9]  
Chapelle O., 2009, IEEE T NEURAL NETWOR, V20
[10]   Nonlinear process identification in the presence of multiple correlated hidden scheduling variables with missing data [J].
Chen, Lei ;
Khatibisepehr, Shima ;
Huang, Biao ;
Liu, Fei ;
Ding, Yongsheng .
AICHE JOURNAL, 2015, 61 (10) :3270-3287