Learning-Assisted Secure End-to-End Network Slicing for Cyber-Physical Systems | IEEE Journals & Magazine | IEEE Xplore

Learning-Assisted Secure End-to-End Network Slicing for Cyber-Physical Systems


Abstract:

There is a pressing need to interconnect physical systems such as power grid and vehicles for efficient management and safe operations. Due to the diverse features of phy...Show More

Abstract:

There is a pressing need to interconnect physical systems such as power grid and vehicles for efficient management and safe operations. Due to the diverse features of physical systems, there is hardly a one-size-fits-all networking solution for developing cyber-physical systems. Network slicing is a promising technology that allows network operators to create multiple virtual networks on top of a shared network infrastructure. These virtual networks can be tailored to meet the requirements of different cyber-physical systems. However, it is challenging to design secure network slicing solutions that can efficiently create end-to-end network slices for diverse cyber-physical systems. In this article, we discuss the challenges and security issues of network slicing, study learning-assisted network slicing solutions, and analyze their performance under the denial-of-service attack. We also present a design and implementation of a small-scale testbed for evaluating the network slicing solutions.
Published in: IEEE Network ( Volume: 34, Issue: 3, May/June 2020)
Page(s): 37 - 43
Date of Publication: 02 June 2020

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