A review on effective alarm management systems for industrial process control: barriers and opportunities

FE Mustafa, I Ahmed, A Basit, SH Malik… - International Journal of …, 2023 - Elsevier
The effective robust management of plant requires the implementation of industrial alarm
systems in a very significant capacity. The core objective of alarms is to warn the operator of …

Online reduced kernel PLS combined with GLRT for fault detection in chemical systems

R Fazai, M Mansouri, K Abodayeh, H Nounou… - Process Safety and …, 2019 - Elsevier
In this paper, an improved fault detection method is proposed based on kernel partial least
squares (KPLS) model and generalized likelihood ratio test (GLRT) detection chart in order …

An optimized long short-term memory network based fault diagnosis model for chemical processes

Y Han, N Ding, Z Geng, Z Wang, C Chu - Journal of Process Control, 2020 - Elsevier
With the development of the chemical industry, fault diagnosis of chemical processes has
become a challenging problem because of the high-dimensional data and complex time …

Toward robust fault identification of complex industrial processes using stacked sparse-denoising autoencoder with softmax classifier

J Liu, L Xu, Y Xie, T Ma, J Wang, Z Tang… - IEEE Transactions …, 2021 - ieeexplore.ieee.org
This article proposes a robust end-to-end deep learning-induced fault recognition scheme
by stacking multiple sparse-denoising autoencoders with a Softmax classifier, called stacked …

A machine-learning-based distributed system for fault diagnosis with scalable detection quality in industrial IoT

R Marino, C Wisultschew, A Otero… - IEEE Internet of …, 2020 - ieeexplore.ieee.org
In this article, a methodology based on machine learning for fault detection in continuous
processes is presented. It aims to monitor fully distributed scenarios, such as the Tennessee …

Statistics Mahalanobis distance for incipient sensor fault detection and diagnosis

H Ji - Chemical Engineering Science, 2021 - Elsevier
For modern industrial processes, many sensors equipped operate in harsh environments
and the large number of sensors increases the probability of sensor malfunction. In order to …

Graph dynamic autoencoder for fault detection

L Liu, H Zhao, Z Hu - Chemical Engineering Science, 2022 - Elsevier
Dynamic information is a non-negligible part of time-correlated process data, and its full
utilization can improve the performance of fault detection. Traditional dynamic methods …

Advanced statistical and meta-heuristic based optimization fault diagnosis techniques in complex industrial processes: a comparative analysis

FE Mustafa, AQ Khan, A Samee, I Ahmed, M Abid… - IEEE …, 2023 - ieeexplore.ieee.org
Industrial processes are nonlinear and complicated in nature, requiring accurate fault
detection to minimize the deterioration in performance and to respond quickly to …

New nonlinear approach for process monitoring: Neural component analysis

Z Lou, Y Wang - Industrial & Engineering Chemistry Research, 2020 - ACS Publications
Nonlinearity is extremely common in industrial processes. For handling the nonlinearity
problem, this paper combines artificial neural networks (ANN) with principal component …

MWRSPCA: Online fault monitoring based on moving window recursive sparse principal component analysis

J Liu, J Wang, X Liu, T Ma, Z Tang - Journal of Intelligent Manufacturing, 2022 - Springer
This paper proposes a moving window recursive sparse principal component analysis
(MWRSPCA)-based online fault monitoring scheme, aim at providing an online fault …