Trust-based Approaches Towards Enhancing IoT Security: A Systematic Literature Review
November 20, 2023 Β· Declared Dead Β· π Cryptography and Blockchain
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Authors
Oghenetejiri Okporokpo, Funminiyi Olajide, Nemitari Ajienka, Xiaoqi Ma
arXiv ID
2311.11705
Category
cs.CR: Cryptography & Security
Cross-listed
cs.NI
Citations
4
Venue
Cryptography and Blockchain
Last Checked
4 months ago
Abstract
The continuous rise in the adoption of emerging technologies such as Internet of Things (IoT) by businesses has brought unprecedented opportunities for innovation and growth. However, due to the distinct characteristics of these emerging IoT technologies like real-time data processing, Self-configuration, interoperability, and scalability, they have also introduced some unique cybersecurity challenges, such as malware attacks, advanced persistent threats (APTs), DoS /DDoS (Denial of Service & Distributed Denial of Service attacks) and insider threats. As a result of these challenges, there is an increased need for improved cybersecurity approaches and efficient management solutions to ensure the privacy and security of communication within IoT networks. One proposed security approach is the utilization of trust-based systems and is the focus of this study. This research paper presents a systematic literature review on the Trust-based cybersecurity security approaches for IoT. A total of 23 articles were identified that satisfy the review criteria. We highlighted the common trust-based mitigation techniques in existence for dealing with these threats and grouped them into three major categories, namely: Observation-Based, Knowledge-Based & Cluster-Based systems. Finally, several open issues were highlighted, and future research directions presented.
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