A Context-Aware Information-Based Clone Node Attack Detection Scheme in Internet of Things
Khizar Hameed, Saurabh Garg, Muhammad Bilal Amin, Byeong Kang, Abid, Khan

TL;DR
This paper proposes a novel, efficient scheme for detecting clone node attacks in IoT networks by leveraging environmental context information and advanced cryptographic verification, enhancing security and reducing overhead.
Contribution
It introduces a context-aware clone detection scheme using location proofs and batch verification with elliptic curve signatures, improving detection speed and accuracy in IoT security.
Findings
High detection accuracy achieved
Minimal detection time demonstrated
Reduced computation, communication, and storage overhead
Abstract
The rapidly expanding nature of the Internet of Things (IoT) networks is beginning to attract interest across a range of applications, including smart homes, smart transportation, smart health, and industrial contexts. This cutting-edge technology enables individuals to track and control their integrated environment in real-time and remotely via a thousand IoT devices comprised of sensors and actuators that actively participate in sensing, processing, storing, and sharing information. Nonetheless, IoT devices are frequently deployed in hostile environments, wherein adversaries attempt to capture and breach them in order to seize control of the entire network. One such example of potentially malicious behaviour is the cloning of IoT devices, in which an attacker can physically capture the devices, obtain some sensitive information, duplicate the devices, and intelligently deploy them in…
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