Industrial process data visualization based on a deep enhanced t -distributed stochastic neighbor embedding neural network
ISSN: 0144-5154
Article publication date: 18 March 2022
Issue publication date: 24 March 2022
Abstract
Purpose
The purpose of this paper is to propose a approach for data visualization and industrial process monitoring.
Design/methodology/approach
A deep enhanced t-distributed stochastic neighbor embedding (DESNE) neural network is proposed for data visualization and process monitoring. The DESNE is composed of two deep neural networks: stacked variant auto-encoder (SVAE) and a deep label-guided t-stochastic neighbor embedding (DLSNE) neural network. In the DESNE network, SVAE extracts informative features of the raw data set, and then DLSNE projects the extracted features to a two dimensional graph.
Findings
The proposed DESNE is verified on the Tennessee Eastman process and a real data set of blade icing of wind turbines. The results indicate that DESNE outperforms some visualization methods in process monitoring.
Originality/value
This paper has significant originality. A stacked variant auto-encoder is proposed for feature extraction. The stacked variant auto-encoder can improve the separation among classes. A deep label-guided t-SNE is proposed for visualization. A novel visualization-based process monitoring method is proposed.
Keywords
Acknowledgements
The authors are grateful for the support of National key research and development program of China (2021YFC2101100), and National Natural Science Foundation of China (21878081).
Citation
Lu, W. and Yan, X. (2022), "Industrial process data visualization based on a deep enhanced
Publisher
:Emerald Publishing Limited
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