Cyber-Physical System Security Based on Human Activity Recognition through IoT Cloud Computing

Author:

Achar Sandesh1ORCID,Faruqui Nuruzzaman2ORCID,Whaiduzzaman Md3ORCID,Awajan Albara4ORCID,Alazab Moutaz4ORCID

Affiliation:

1. Walmart Global Tech, Sunnyvale, CA 94086, USA

2. Department of Software Engineering, Daffodil International University, Daffodil Smart City, Dhaka 1216, Bangladesh

3. School of Information Systems, Faculty of Science, Queensland University of Technology, Brisbane 4000, Australia

4. Intelligent Systems Department, Al-Balqa Applied University, Al-Salt 19117, Jordan

Abstract

Cyber-physical security is vital for protecting key computing infrastructure against cyber attacks. Individuals, corporations, and society can all suffer considerable digital asset losses due to cyber attacks, including data loss, theft, financial loss, reputation harm, company interruption, infrastructure damage, ransomware attacks, and espionage. A cyber-physical attack harms both digital and physical assets. Cyber-physical system security is more challenging than software-level cyber security because it requires physical inspection and monitoring. This paper proposes an innovative and effective algorithm to strengthen cyber-physical security (CPS) with minimal human intervention. It is an approach based on human activity recognition (HAR), where GoogleNet–BiLSTM network hybridization has been used to recognize suspicious activities in the cyber-physical infrastructure perimeter. The proposed HAR-CPS algorithm classifies suspicious activities from real-time video surveillance with an average accuracy of 73.15%. It incorporates machine vision at the IoT edge (Mez) technology to make the system latency tolerant. Dual-layer security has been ensured by operating the proposed algorithm and the GoogleNet–BiLSTM hybrid network from a cloud server, which ensures the security of the proposed security system. The innovative optimization scheme makes it possible to strengthen cyber-physical security at only USD 4.29±0.29 per month.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference52 articles.

1. A survey of cyber attacks on cyber physical systems: Recent advances and challenges;Duo;IEEE/CAA J. Autom. Sin.,2022

2. Performance based attack detection and security analysis for cyber-physical systems;Zhao;Int. J. Robust Nonlinear Control,2023

3. Hammoudeh, M., Epiphaniou, G., and Pinto, P. (2023). Cyber-Physical Systems: Security Threats and Countermeasures. J. Sens. Actuator Netw., 12.

4. De Pascale, D., Sangiovanni, M., Cascavilla, G., Tamburri, D.A., and Van Den Heuvel, W.J. (2022, January 26–30). Securing Cyber-Physical Spaces with Hybrid Analytics: Vision and Reference Architecture. Proceedings of the Computer Security: ESORICS 2022 International Workshops: CyberICPS 2022, SECPRE 2022, SPOSE 2022, CPS4CIP 2022, CDT & SECOMANE 2022, EIS 2022, and SecAssure 2022, Copenhagen, Denmark.

5. Effect of background color perception on attention span and short-term memory in normal students;Jadhao;Natl. J. Physiol. Pharm. Pharmacol.,2020

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