Deep Learning Method based on Big Data for Defects Detection in Manufacturing Systems Industry 4.0
Last updated: 25 Dec 2024
10.21608/ijisd.2021.145552
Big Data, CPS, IOT, Cloud Computing, Smart Manufacturing, Industry 4.0, Machine Learning, Deep learning, Convolutional neural network
Ashraf
Abou Tabl
Faculty of Engineering, Department of Mechanical, Automotive & Materials Engineering (MAME), University of Windsor, Windsor, ON, Canada. , School of Business & IT, Data Analytics Department, St. Clair College, Windsor, ON, Canada.
aboutaba@uwindsor.ca
Abedalrhman
Alkhateeb
School of Computer Science, University of Windsor, Windsor, ON, Canada.
Waguih
ElMaraghy
Faculty of Engineering, Department of Mechanical, Automotive & Materials Engineering (MAME), University of Windsor, Windsor, ON, Canada.
wem@uwindsor.ca
2
1
21476
2021-07-01
2020-08-07
2021-07-01
1
14
2682-3993
2682-4000
https://ijisd.journals.ekb.eg/article_145552.html
https://ijisd.journals.ekb.eg/service?article_code=145552
1
Original Article
1,141
Journal
International Journal of Industry and Sustainable Development
https://ijisd.journals.ekb.eg/
Deep Learning Method based on Big Data for Defects Detection in Manufacturing Systems Industry 4.0
Details
Type
Article
Created At
22 Jan 2023