Process monitoring using non-linear statistical techniques

被引:52
作者
Zhang, J [1 ]
Martin, EB [1 ]
Morris, AJ [1 ]
机构
[1] UNIV NEWCASTLE UPON TYNE,DEPT ENGN MATH,NEWCASTLE TYNE NE1 7RU,TYNE & WEAR,ENGLAND
来源
CHEMICAL ENGINEERING JOURNAL | 1997年 / 67卷 / 03期
关键词
process monitoring; fault diagnosis; multivariate statistics; non-linear principal component analysis; polymerisation;
D O I
10.1016/S1385-8947(97)00048-X
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A large number of process variables are usually measured and stored in computer data base during process operation. These variables are usually highly correlated and the real dimensionality of the monitored process is considerably less than that represented by the number of process variables collected. Successful process performance monitoring requires the efficient handling of large amounts of monitored plant data. Principal component analysis reduces the dimensionality of the process by creating a new set of variables, principal components, which attempt to reflect the true underlying system dimension. Process performance can then be monitored in a low dimensional principal component space. Linear process performance monitoring is based upon plots of scores and squared prediction errors from a principal component model. However, for highly non-linear processes, this form of monitoring may not be efficient since the process dimensionality cannot be represented by a small number of linear principal components. Non-linearly correlated process variables can be reduced to a set of non-linear principal components, through the application of non-linear principal component analysis. Efficient process monitoring can then be performed in a low dimensional non-linear principal component space. In parallel with the conventional multivariate plots, the use of accumulated scores provides a significant breakthrough in the separation of different operating conditions/faults, leading to robust early warning of potential plant malfunctions. An application to the condition monitoring of a polymerisation reactor demonstrates the effectiveness of the non-linear monitoring approach. (C) 1997 Elsevier Science S.A.
引用
收藏
页码:181 / 189
页数:9
相关论文
共 34 条
[21]   MODEL-BASED METHODS FOR FAULT-DIAGNOSIS - SOME GUIDE LINES [J].
PATTON, RJ ;
CHEN, J ;
NIELSEN, SB .
TRANSACTIONS OF THE INSTITUTE OF MEASUREMENT AND CONTROL, 1995, 17 (02) :73-83
[22]   EFFECT OF IMPURITIES ON EMULSION POLYMERIZATION - CASE-I KINETICS [J].
PENLIDIS, A ;
MACGREGOR, JF ;
HAMIELEC, AE .
JOURNAL OF APPLIED POLYMER SCIENCE, 1988, 35 (08) :2023-2038
[23]  
PIOVOSO MJ, 1994, INT J CONTROL, V59, P743, DOI 10.1080/00207179408923103
[24]   PROCESS DATA CHEMOMETRICS [J].
PIOVOSO, MJ ;
KOSANOVICH, KA ;
YUK, JP .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 1992, 41 (02) :262-268
[25]   A NEURAL NETWORK METHODOLOGY FOR PROCESS FAULT-DIAGNOSIS [J].
VENKATASUBRAMANIAN, V ;
CHAN, K .
AICHE JOURNAL, 1989, 35 (12) :1993-2002
[26]   INCIPIENT FAULT-DIAGNOSIS OF CHEMICAL PROCESSES VIA ARTIFICIAL NEURAL NETWORKS [J].
WATANABE, K ;
MATSUURA, I ;
ABE, M ;
KUBOTA, M ;
HIMMELBLAU, DM .
AICHE JOURNAL, 1989, 35 (11) :1803-1812
[27]   The process chemometrics approach to process monitoring and fault detection [J].
Wise, BM ;
Gallagher, NB .
JOURNAL OF PROCESS CONTROL, 1996, 6 (06) :329-348
[29]   MODIFIED HEBBIAN LEARNING FOR CURVE AND SURFACE FITTING [J].
XU, L ;
OJA, E ;
SUEN, CY .
NEURAL NETWORKS, 1992, 5 (03) :441-457
[30]  
Zhang J, 1996, CHEM ENG RES DES, V74, P89