A two-step multivariate statistical learning approach for batch process soft sensing

Received: 13 July 2021, Revised: 19 July 2021, Accepted: 10 Oct 2021, Available online: 22 Dec 2021, Version of Record: 22 Dec 2021

Aaron Hicks a ǂ
,
Matthew Johnston a ǂ
,
Max Mowbray a
,
Maxwell Barton a
,
Amanda Lane b
,
Cesar Mendoza b
,
Philip Martin a
,
Dongda Zhang a
a
Department of Chemical Engineering and Analytical Science, University of Manchester, Oxford Road, Manchester, M1 3AL, United Kingdom
b
Unilever Research Port Sunlight, Quarry Rd East, Bebington C63 3JW, United Kingdom

Abstract



Statistical machine learning algorithms have been widely used to analyse industrial data for batch process monitoring and control. In this study, we aimed to take a two-step approach to systematically reduce data dimensionality and to design soft-sensors for product quality prediction. The approach first employs partial least squares to screen the entire dataset and identify critical time regions and operational variables, then adopts multiway partial least squares to construct soft-sensors within the reduced space to estimate final product quality. Innovations of this approach include the ease of data visualisation and ability to identify major operational activities within the factory. To highlight efficiency and practical benefits, an industrial personal care product manufacturing process was presented as an example and two soft-sensors were successfully developed for product end viscosity estimation. Furthermore, the accuracy, reliability, and data efficiency of the soft-sensors were thoroughly discussed. This paper, therefore, demonstrates the industrial potential of the proposed approach.
Keywords:
Machine learning
Multiway partial least squares
Batch process
Soft-sensor
Dimensionality reduction
Viscosity prediction



Description



   

Indexed in scopus

https://www.scopus.com/authid/detail.uri?authorId=57828640700
      

Article metrics

10.31763/DSJ.v5i1.1674 Abstract views : | PDF views :

   

Cite

   

Full Text

Download

Conflict of interest


“Authors state no conflict of interest”


Funding Information


This research received no external funding or grants


Peer review:


Peer review under responsibility of Defence Science Journal


Ethics approval:


Not applicable.


Consent for publication:


Not applicable.


Acknowledgements:


None.