Conference
Multivariate methods for the analysis of data-bases, process monitoring, and control in the material processing industries
Abstract
This paper gives an overview of multivariate methods for extracting information from large process databases. Process data matrices are almost always of less than full statistical rank, and therefore latent variable methods are shown to be well suited to obtaining useful subspace models for treating a variety of important industrial problems. An overview of the important concepts behind latent variable models is presented and the methods are …
Authors
MacGregor JF; Kourti T; Liu J; Bradley J; Dunn K; Yu H
Volume
12
Pagination
pp. 193-200
Publication Date
January 1, 2007
DOI
10.3182/20070821-3-ca-2919.00028
Conference proceedings
IFAC Proceedings Volumes IFAC Papersonline
Issue
PART 1
ISSN
1474-6670