Machine Learning Application for Virtual Replicas (Digital Twins) in Cybersecurity

Author:

Desai Jaynesh H.1ORCID,Patel Sneha1,Verma Shanti2,Subramaniam Sangeetha3ORCID

Affiliation:

1. Bhagwan Mahavir University, India

2. L.J. University, India

3. Kongunadu College of Engineering and Technology, India

Abstract

In the swiftly evolving realm of technology and cybersecurity, safeguarding our digital assets is paramount. This study explores the integration of machine learning techniques with virtual replicas, or digital twins, under the proposed system name CyberGuard, aiming to fortify cybersecurity measures and proactively prevent potential threats. Digital twins serve as virtual counterparts to real-world systems, providing a comprehensive understanding of their behavior. The research specifically concentrates on leveraging machine learning algorithms within CyberGuard to enhance the capabilities of digital twins in identifying and mitigating cyber threats. Through advanced analytics, this intelligent system can adapt to evolving cyber risks, identify unusual activities, and predict potential security breaches. The results highlight that the synergy between machine learning and Virtual Replicas not only improves threat detection and response times but also continuously strengthens the overall resilience of our cybersecurity infrastructure.

Publisher

IGI Global

Reference17 articles.

1. Cyber security concerns in e-learning education.;I.Bandara;ICERI2014 Proceedings,2014

2. Framework for Implementation of Smart Driver Assistance System Using Augmented Reality;K.Baskar;International Conference on Big data and Cloud Computing. Springer Nature Singapore,2022

3. Dhunna, G. S., & Al-Anbagi, I. (2017, October). A low power cybersecurity mechanism for WSNs in a smart grid environment. In 2017 IEEE electrical power and energy conference (EPEC) (pp. 1-6). IEEE.

4. Cyber Security, Cyber Threats, Implications and Future Perspectives: A Review

5. Machine learning in cybersecurity: A review

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