PLS modelling and fault detection on the Tennessee Eastman benchmark

被引:14
作者
Wilson, DJH
Irwin, GW
机构
[1] Queens Univ Belfast, Dept Elect & Elect Engn, Intelligent Syst Control Grp, Belfast BT9 5AH, Antrim, North Ireland
[2] TW Control Ltd, Belfast BT6 8AW, Antrim, North Ireland
关键词
D O I
10.1080/00207720050197820
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper describes the application of multivariate regression techniques to the Tennessee Eastman benchmark process for modelling and fault detection. Two methods are applied : linear partial least squares, and a nonlinear variant of this procedure using a radial basis function inner relation. The performance of the RBF networks is enhanced through the use of a recently developed training algorithm which uses quasi-Newton optimization to ensure an efficient and parsimonious network; details of this algorithm can be found in this paper. The PLS and PLS/RBF methods are then used to create on-line inferential models of delayed process measurements. As these measurements relate to the final product composition, these models suggest that on-line statistical quality control analysis should be possible for this plant. The generation of `soft sensors' for these measurements has the further effect of introducing a redundant element into the system, redundancy which can then be used to generate a fault detection and isolation scheme for these sensors. This is achieved by arranging the sensors and models in a manner comparable to the dedicated estimator scheme of Clarke et al. 1975, IEEE Trans. Pero. Elect. Sys., AES-14R, 465-473. The effectiveness of this scheme is demonstrated on a series of simulated sensor and process faults, with full detection and isolation shown to be possible for sensor malfunctions, and detection feasible in the case of process faults. Suggestions for enhancing the diagnostic capacity in the latter case are covered towards the end of the paper.
引用
收藏
页码:1449 / 1457
页数:9
相关论文
共 16 条
[1]   HYBRID LEARNING ALGORITHM FOR GAUSSIAN POTENTIAL FUNCTION NETWORKS [J].
CHEN, CL ;
CHEN, WC ;
CHANG, FY .
IEE PROCEEDINGS-D CONTROL THEORY AND APPLICATIONS, 1993, 140 (06) :442-448
[2]  
CLARKE RN, 1975, IEEE T AERO ELECT SY, V14, P465
[3]   A PLANT-WIDE INDUSTRIAL-PROCESS CONTROL PROBLEM [J].
DOWNS, JJ ;
VOGEL, EF .
COMPUTERS & CHEMICAL ENGINEERING, 1993, 17 (03) :245-255
[4]   AN EXAMPLE OF 2-BLOCK PREDICTIVE PARTIAL LEAST-SQUARES REGRESSION WITH SIMULATED DATA [J].
GELADI, P ;
KOWALSKI, BR .
ANALYTICA CHIMICA ACTA, 1986, 185 :19-32
[5]  
GELADI P, 1986, ANAL CHIM ACTA, V1, P185
[6]  
Kohonen, 1984, SELF ORG ASS MEMORY
[7]  
MCAVOY TJ, 1994, COMPUT CHEM ENG, V18, P138
[8]   A hybrid linear/nonlinear training algorithm for feedforward neural networks [J].
McLoone, S ;
Brown, MD ;
Irwin, G ;
Lightbody, G .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1998, 9 (04) :669-684
[9]   NONLINEAR PLS MODELING USING NEURAL NETWORKS [J].
QIN, SJ ;
MCAVOY, TJ .
COMPUTERS & CHEMICAL ENGINEERING, 1992, 16 (04) :379-391
[10]  
SHAW SN, 1999, IR SYST SIGN PROC C