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Subspace based model identification for missing...
Journal article

Subspace based model identification for missing data

Abstract

Abstract This article addresses the problem of missing process data in data‐driven dynamic modeling approaches. The key motivation is to avoid using imputation methods or deletion of key process information when identifying the model, and utilizing the rest of the information appropriately at the model building stage. To this end, a novel approach is developed that adapts nonlinear iterative partial least squares (NIPALS) algorithms from both …

Authors

Patel N; Mhaskar P; Corbett B

Journal

AIChE Journal, Vol. 66, No. 10,

Publisher

Wiley

Publication Date

October 2020

DOI

10.1002/aic.16538

ISSN

0001-1541