Title :
Partial least squares regression for recursive system identification
Author_Institution :
Fisher-Rosemount Syst. Inc., Austin, TX, USA
Abstract :
Industrial processes usually involve a large number of variables, many of which vary in a correlated manner. To identify a process model which has correlated variables, an ordinary least squares approach demonstrates ill-conditioned problem and the resulting model is sensitive to changes in sampled data. In this paper, a recursive partial least squares (PLS) regression is used for online system identification and circumventing the ill-conditioned problem. The partial least squares method is used to remove the correlation by projecting the original variable space to an orthogonal latent space. Application of the proposed algorithm to a chemical processing modeling problem is discussed
Keywords :
identification; least squares approximations; statistical analysis; chemical processing modeling problem; correlated variables; industrial processes; online system identification; orthogonal latent space; recursive partial least squares regression; Chemical industry; Chemical processes; Data analysis; IEEE members; Input variables; Least squares methods; Linear regression; Principal component analysis; Robustness; System identification;
Conference_Titel :
Decision and Control, 1993., Proceedings of the 32nd IEEE Conference on
Conference_Location :
San Antonio, TX
Print_ISBN :
0-7803-1298-8
DOI :
10.1109/CDC.1993.325671