Industrial data science–a review of machine learning applications for chemical and process industries

M Mowbray, M Vallerio, C Perez-Galvan… - Reaction Chemistry & …, 2022 - pubs.rsc.org
In the literature, machine learning (ML) and artificial intelligence (AI) applications tend to
start with examples that are irrelevant to process engineers (eg classification of images …

Bridging systems theory and data science: A unifying review of dynamic latent variable analytics and process monitoring

SJ Qin, Y Dong, Q Zhu, J Wang, Q Liu - Annual Reviews in Control, 2020 - Elsevier
This paper is concerned with data science and analytics as applied to data from dynamic
systems for the purpose of monitoring, prediction, and inference. Collinearity is inevitable in …

Fault detection and diagnosis with a novel source-aware autoencoder and deep residual neural network

N Amini, Q Zhu - Neurocomputing, 2022 - Elsevier
The capability of deep learning (DL) techniques for dealing with non-linear, dynamic and
correlated data has paved the way for DL-based fault detection and diagnosis (FDD) …

Retrospective comparison of several typical linear dynamic latent variable models for industrial process monitoring

J Zheng, C Zhao, F Gao - Computers & Chemical Engineering, 2022 - Elsevier
Process dynamic behaviors resulting from closed-loop control and the inherence of
processes are ubiquitous in industrial processes and bring a considerable challenge for …

Enhancing the reliability and accuracy of data-driven dynamic soft sensor based on selective dynamic partial least squares models

W Shao, W Han, Y Li, Z Ge, D Zhao - Control Engineering Practice, 2022 - Elsevier
Data-driven soft sensors have been widely applied to a broad range of process industries for
virtually sensing difficult-to-measure but of-great-concern variables. However, it is still …

Applying and dissecting LSTM neural networks and regularized learning for dynamic inferential modeling

J Li, SJ Qin - Computers & Chemical Engineering, 2023 - Elsevier
Deep learning models such as the long short-term memory (LSTM) network have been
applied for dynamic inferential modeling. However, many studies apply LSTM as a black …

Forecasting of iron ore sintering quality index: A latent variable method with deep inner structure

C Yang, C Yang, J Li, Y Li, F Yan - Computers in Industry, 2022 - Elsevier
Accurate and real-time estimation of iron ore sintering quality index is essential for the
stability of the production process. However, the sintering process data is generally …

Attention-mechanism based DiPLS-LSTM and its application in industrial process time series big data prediction

Y Wang, C Qian, SJ Qin - Computers & Chemical Engineering, 2023 - Elsevier
Big data and time series are typical features of modern industrial process data. Effective time
series modeling methods are required for ensuring the normal and stable operation of …

Causal discovery based on observational data and process knowledge in industrial processes

L Cao, J Su, Y Wang, Y Cao, LC Siang… - Industrial & …, 2022 - ACS Publications
Causal discovery approaches are gaining popularity in industrial processes. Existing causal
discovery algorithms can indeed find some important causal relationships from industrial …

Adaptive-learning model predictive control for complex physiological systems: Automated insulin delivery in diabetes

MR Askari, I Hajizadeh, M Rashid, N Hobbs… - Annual Reviews in …, 2020 - Elsevier
An adaptive-learning model predictive control (AL-MPC) framework is proposed for
incorporating disturbance prediction, model uncertainty quantification, pattern learning, and …