Improved Process Monitoring Using Nonlinear Principal Component Models


Autoria(s): Antory, David; Irwin, George W.; Kruger, Uwe; McCullough, Geoffrey
Data(s)

01/05/2008

Resumo

This paper presents two new approaches for use in complete process monitoring. The firstconcerns the identification of nonlinear principal component models. This involves the application of linear<br/>principal component analysis (PCA), prior to the identification of a modified autoassociative neural network (AAN) as the required nonlinear PCA (NLPCA) model. The benefits are that (i) the number of the reduced set of linear principal components (PCs) is smaller than the number of recorded process variables, and (ii) the set of PCs is better conditioned as redundant information is removed. The result is a new set of input data for a modified neural representation, referred to as a T2T network. The T2T NLPCA model is then used for complete process monitoring, involving fault detection, identification and isolation. The second approach introduces a new variable reconstruction algorithm, developed from the T2T NLPCA model. Variable reconstruction can enhance the findings of the contribution charts still widely used in industry by reconstructing the outputs from faulty sensors to produce more accurate fault isolation. These ideas are illustrated using recorded industrial data relating to developing cracks in an industrial glass melter process. A comparison of linear and nonlinear models, together with the combined use of contribution charts and variable reconstruction, is presented.

Identificador

http://pure.qub.ac.uk/portal/en/publications/improved-process-monitoring-using-nonlinear-principal-component-models(f15b869a-b7a8-4871-a5fa-3c0456a06b6b).html

http://dx.doi.org/10.1002/int.20281

http://www.scopus.com/inward/record.url?scp=43649094117&partnerID=8YFLogxK

Idioma(s)

eng

Direitos

info:eu-repo/semantics/restrictedAccess

Fonte

Antory , D , Irwin , G W , Kruger , U & McCullough , G 2008 , ' Improved Process Monitoring Using Nonlinear Principal Component Models ' International Journal of Intelligent Systems , vol 23 , no. 5 , pp. 520-544 . DOI: 10.1002/int.20281

Palavras-Chave #/dk/atira/pure/subjectarea/asjc/1700/1702 #Artificial Intelligence #/dk/atira/pure/subjectarea/asjc/2200/2207 #Control and Systems Engineering
Tipo

article