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Keywords: Process monitoring
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Journal Articles
Industrial process data visualization based on a deep enhanced t-distributed stochastic neighbor embedding neural network
Available to Purchase
Journal:
Robotic Intelligence and Automation
Assembly Automation (2022) 42 (2): 268–277.
Published: 18 March 2022
...Weipeng Lu; Xuefeng Yan 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...
Journal Articles
A survey on data-driven process monitoring and diagnostic methods for variation reduction in multi-station assembly systems
Available to Purchase
Journal:
Robotic Intelligence and Automation
Assembly Automation (2019) 39 (4): 727–739.
Published: 25 July 2019
.... This paper aims to review the development of data-driven modeling methods for process monitoring and fault diagnosis in multi-station assembly systems. Furthermore, the authors discuss the applications of the methods proposed and present suggestions for future studies in data mining for quality control...
