IoT and Cybersecurity: Addressing Security Challenges in a Connected World

Authors

  • Dr. Madhu Kour

Abstract

As IoT adoption increases, cybersecurity threats are becoming a major concern for businesses and consumers. This paper explores the vulnerabilities of IoT devices, including data breaches, unauthorized access, and botnet attacks. It discusses cybersecurity solutions such as blockchain for secure data transmission, AI-driven anomaly detection, and end-to-end encryption. Case studies highlight real-world cyber threats and the measures taken to mitigate them. The study concludes with recommendations for improving IoT security through policy regulations, technological advancements, and best practices.

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Published

2024-01-14

How to Cite

Kour, D. M. (2024). IoT and Cybersecurity: Addressing Security Challenges in a Connected World. Indonasian Journal of Multidisciplinary Innovations , 6(6). Retrieved from https://scholarlyarticle.vncinstitute.com/index.php/IJMI/article/view/12

Issue

Section

Articles