Dynamic Multiblock Regression for Process Modelling
Publication details
Journal : Journal of Chemometrics , vol. 38 , p. 1–18 , 2024
International Standard Numbers
:
Printed
:
0886-9383
Electronic
:
1099-128X
Publication type : Academic article
Issue : 12
Links
:
DOI
:
doi.org/10.1002/cem.3618
ARKIV
:
hdl.handle.net/11250/3163773
Research areas
Digitalisation
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Summary
The study introduces three novel strategies for incorporating capabilities for dynamic modelling into multiblock regression methods by integrating sequentially orthogonalised partial least squares (SO-PLS) with different dynamic modelling techniques. The study evaluates these strategies using synthetic datasets and an industrial example, comparing their performance in predictive ability, identification of process dynamics, and quantification of block contributions. Results suggest that these approaches can effectively model the dynamics with performance comparable to state-of-the-art methods, providing, at the same time, insight into the dynamic order and block contributions. One of the strategies, sequentially orthogonalised dynamic augmented (SODA)–PLS, shows promise by ensuring that redundant information in the time dimension is not included, resulting in simpler and more easily interpretable dynamic models. These multiblock dynamic regression strategies have potential applications for improved process understanding in industrial settings, especially where multiple data sources and inherent time dynamics are present.