IEEE Transactions on Industrial Informatics, volume 16, issue 5, pages 3322-3329

Energy-Aware Green Adversary Model for Cyberphysical Security in Industrial System

Arun Kumar Sangaiah 1
Darshan Vishwasrao Medhane 2
Guibin Bian 3, 4
Ahmed Ghoneim 5, 6
Mubarak Alrashoud 5
M. F. Hossain 5
Publication typeJournal Article
Publication date2020-05-01
scimago Q1
wos Q1
SJR4.420
CiteScore24.1
Impact factor11.7
ISSN15513203, 19410050
Computer Science Applications
Electrical and Electronic Engineering
Information Systems
Control and Systems Engineering
Abstract
Adversary models have been fundamental to the various cryptographic protocols and methods. However, their use in most of the branches of research in computer science is comparatively restricted, primarily in case of the research in cyberphysical security (e.g., vulnerability studies, position confidentiality). In this article, we propose an energy-aware green adversary model for its use in smart industrial environment through achieving confidentiality. Even though, mutually the hardware and the software parts of cyberphysical systems can be improved to decrease its energy consumption, this article focuses on aspects of conserving position and information confidentiality. On the basis of our findings (assumptions, adversary goals, and capabilities) from the literature, we give some testimonials to help practitioners and researchers working in cyberphysical security. The proposed model that runs on real-time anticipatory position-based query scheduling in order to minimize the communication and computation cost for each query, thus, facilitating energy consumption minimization. Moreover, we calculate the transferring/acceptance slots required for each query to avoid deteriorating slots. The experimental results confirm that the proposed approach can diminish energy consumption up to five times in comparison to existing approaches.
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