Review of adaptation mechanisms for data-driven soft sensors

被引:394
作者
Kadlec, Petr [1 ]
Grbic, Ratko [2 ]
Gabrys, Bogdan [1 ]
机构
[1] Bournemouth Univ, Smart Technol Res Ctr, Computat Intelligence Res Grp, Poole BH12 5BB, Dorset, England
[2] Univ Osijek, Fac Elect Engn, Osijek, Croatia
关键词
Data-driven soft sensing; Process industry; Adaptation; Incremental learning; Online prediction; Process monitoring; Soft sensor case studies; Review; PRINCIPAL COMPONENT ANALYSIS; PROCESS FAULT-DETECTION; QUANTITATIVE MODEL; NEURAL-NETWORK; PLS; SIZE; ALGORITHMS; REGRESSION; ANALYZER; MEMORY;
D O I
10.1016/j.compchemeng.2010.07.034
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In this article, we review and discuss algorithms for adaptive data-driven soft sensing. In order to be able to provide a comprehensive overview of the adaptation techniques, adaptive soft sensing methods are reviewed from the perspective of machine learning theory for adaptive learning systems. In particular, the concept drift theory is exploited to classify the algorithms into three different types, which are: (i) moving windows techniques; (ii) recursive adaptation techniques; and (iii) ensemble-based methods. The most significant algorithms are described in some detail and critically reviewed in this work. We also provide a comprehensive list of publications where adaptive soft sensors were proposed and applied to practical problems. Furthermore in order to enable the comparison of different methods to standard soft sensor applications, a list of publicly available data sets for the development of data-driven soft sensors is presented. (C) 2010 Elsevier Ltd. All rights reserved.
引用
收藏
页码:1 / 24
页数:24
相关论文
共 106 条
[51]  
Krogh A., 1995, Advances in Neural Information Processing Systems 7, P231
[52]   Application of exponentially weighted principal component analysis for the monitoring of a polymer film manufacturing process [J].
Lane, S ;
Martin, EB ;
Morris, AJ ;
Gower, P .
TRANSACTIONS OF THE INSTITUTE OF MEASUREMENT AND CONTROL, 2003, 25 (01) :17-35
[53]   Adaptive multiscale principal component analysis for on-line monitoring of a sequencing batch reactor [J].
Lee, DS ;
Park, JM ;
Vanrolleghem, PA .
JOURNAL OF BIOTECHNOLOGY, 2005, 116 (02) :195-210
[54]   Adaptive consensus principal component analysis for on-line batch process monitoring [J].
Lee, DS ;
Vanrolleghem, PA .
ENVIRONMENTAL MONITORING AND ASSESSMENT, 2004, 92 (1-3) :119-135
[55]   Fault detection of batch processes using multiway kernel principal component analysis [J].
Lee, JM ;
Yoo, C ;
Lee, IB .
COMPUTERS & CHEMICAL ENGINEERING, 2004, 28 (09) :1837-1847
[56]   Application of a moving-window-adaptive neural network to the modeling of a full-scale anaerobic filter process [J].
Lee, MW ;
Joung, JY ;
Lee, DS ;
Park, JM ;
Woo, SH .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2005, 44 (11) :3973-3982
[57]   Adaptive multiscale principal components analysis for online monitoring of wastewater treatment [J].
Lennox, J ;
Rosen, C .
WATER SCIENCE AND TECHNOLOGY, 2002, 45 (4-5) :227-235
[58]   A recursive Nonlinear PLS algorithm for adaptive nonlinear process modeling [J].
Li, CF ;
Ye, H ;
Wang, GZ ;
Zhang, J .
CHEMICAL ENGINEERING & TECHNOLOGY, 2005, 28 (02) :141-152
[59]   Recursive PCA for adaptive process monitoring [J].
Li, WH ;
Yue, HH ;
Valle-Cervantes, S ;
Qin, SJ .
JOURNAL OF PROCESS CONTROL, 2000, 10 (05) :471-486
[60]   A systematic approach for soft sensor development [J].
Lin, Bao ;
Recke, Bodil ;
Knudsen, Jorgen K. H. ;
Jorgensen, Sten Bay .
COMPUTERS & CHEMICAL ENGINEERING, 2007, 31 (5-6) :419-425