An enhanced AES-GCM based security protocol for securing the IoT communication
https://doi.org/10.17586/2226-1494-2023-23-4-711-719
Abstract
In the recent years, the devices in Internet of Things (IoT) are growing exponentially due to the emergence of many sophisticated applications. This tremendous growth leads to serious security challenges and the devices of Wireless Sensor Networks should be protected from various attacks. IoT can be confgured dynamically without fxed infrastructure and the devices are communicated with one another in an Ad-hoc manner. The work presents the classifcation of various DDoS attacks in the IoT environment and provides a solution for replay attack. All variations of DDoS attacks are modeled using UML based activity modeling. This clearly understands the behavior of each version of attacks and their performance in the environment. The modeling also helps to construct a solution to prevent this attack from its execution. The work also proposed a trust based protocol for replay attacks which allows the attack inside the network and blocks it after identifying the attack based on its specifc behavior. The network performance is improved after implementing this proposed protocol inside the network with help of simulation under realistic conditions. The performance metrics considered in the work are energy, packet loss, computational time and throughput. The paper compares the performance with the state-of-the-art schemes such as Effcient Distributed Deterministic Key and Hash-based Message Authentication Code. The experimental analysis proved that the proposed scheme outperforms the other state-of-the-works in terms of computational cost, throughput, and delay
About the Authors
A. B. Feroz KhanIndia
A.B. Feroz Khan — PhD, Assistant Professor
sc 57209466258
Kilakarai, Ramanathapuram, 623806
S. Kalpana Devi
India
S. Kalpana Devi — Assistant Professor
sc 57211952643
Bengaluru, 560059
K. Rama Devi
India
K. Rama Devi — PhD, Associate Professor
sc 56708714800
Chennai, 600069
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Review
For citations:
Feroz Khan A.B., Kalpana Devi S., Rama Devi K. An enhanced AES-GCM based security protocol for securing the IoT communication. Scientific and Technical Journal of Information Technologies, Mechanics and Optics. 2023;23(4):711-719. https://doi.org/10.17586/2226-1494-2023-23-4-711-719