[HTML][HTML] Process intensification 4.0: A new approach for attaining new, sustainable and circular processes enabled by machine learning

EA López-Guajardo, F Delgado-Licona… - … and Processing-Process …, 2022 - Elsevier
This paper reviews system-level transformations converging into the next generation of
Process Intensification strategies defined as PI4. 0. Process Intensification 4.0 uses data …

Data mining and analytics in the process industry: The role of machine learning

Z Ge, Z Song, SX Ding, B Huang - Ieee Access, 2017 - ieeexplore.ieee.org
Data mining and analytics have played an important role in knowledge discovery and
decision making/supports in the process industry over the past several decades. As a …

Extraction and evaluation of melt pool, plume and spatter information for powder-bed fusion AM process monitoring

Y Zhang, GS Hong, D Ye, K Zhu, JYH Fuh - Materials & Design, 2018 - Elsevier
With the continuous development of additive manufacturing technique, the issue on built
quality has caught increasing attentions. To improve the quality of built parts, the process …

Big data analytics for preventive medicine

MI Razzak, M Imran, G Xu - Neural Computing and Applications, 2020 - Springer
Medical data is one of the most rewarding and yet most complicated data to analyze. How
can healthcare providers use modern data analytics tools and technologies to analyze and …

Big data analytics for intrusion detection system: Statistical decision-making using finite dirichlet mixture models

N Moustafa, G Creech, J Slay - Data Analytics and Decision Support for …, 2017 - Springer
An intrusion detection system has become a vital mechanism to detect a wide variety of
malicious activities in the cyber domain. However, this system still faces an important …

adVAE: A self-adversarial variational autoencoder with Gaussian anomaly prior knowledge for anomaly detection

X Wang, Y Du, S Lin, P Cui, Y Shen, Y Yang - Knowledge-Based Systems, 2020 - Elsevier
Recently, deep generative models have become increasingly popular in unsupervised
anomaly detection. However, deep generative models aim at recovering the data distribution …

Detecting anomalies in time series data via a deep learning algorithm combining wavelets, neural networks and Hilbert transform

S Kanarachos, SRG Christopoulos, A Chroneos… - Expert Systems with …, 2017 - Elsevier
The quest for more efficient real-time detection of anomalies in time series data is critically
important in numerous applications and systems ranging from intelligent transportation …

Forecasting emergency department overcrowding: A deep learning framework

F Harrou, A Dairi, F Kadri, Y Sun - Chaos, Solitons & Fractals, 2020 - Elsevier
As the demand for medical cares has considerably expanded, the issue of managing patient
flow in hospitals and especially in emergency departments (EDs) is certainly a key issue to …

Wind power prediction using bootstrap aggregating trees approach to enabling sustainable wind power integration in a smart grid

F Harrou, A Saidi, Y Sun - Energy Conversion and Management, 2019 - Elsevier
Precise prediction of wind power is important in sustainably integrating the wind power in a
smart grid. The need for short-term predictions is increased with the increasing installed …

Seasonal ARMA-based SPC charts for anomaly detection: Application to emergency department systems

F Kadri, F Harrou, S Chaabane, Y Sun, C Tahon - Neurocomputing, 2016 - Elsevier
Monitoring complex production systems is primordial to ensure management, reliability and
safety as well as maintaining the desired product quality. Early detection of emergent …