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Security and Privacy of Digital Twins for Advanced Manufacturing: A Survey

Authors :
Zemskov, Alexander D.
Fu, Yao
Li, Runchao
Wang, Xufei
Karkaria, Vispi
Tsai, Ying-Kuan
Chen, Wei
Zhang, Jianjing
Gao, Robert
Cao, Jian
Loparo, Kenneth A.
Li, Pan
Publication Year :
2024

Abstract

In Industry 4.0, the digital twin is one of the emerging technologies, offering simulation abilities to predict, refine, and interpret conditions and operations, where it is crucial to emphasize a heightened concentration on the associated security and privacy risks. To be more specific, the adoption of digital twins in the manufacturing industry relies on integrating technologies like cyber-physical systems, the Industrial Internet of Things, virtualization, and advanced manufacturing. The interactions of these technologies give rise to numerous security and privacy vulnerabilities that remain inadequately explored. Towards that end, this paper analyzes the cybersecurity threats of digital twins for advanced manufacturing in the context of data collection, data sharing, machine learning and deep learning, and system-level security and privacy. We also provide several solutions to the threats in those four categories that can help establish more trust in digital twins.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.13939
Document Type :
Working Paper