International Journal of Computer Networks and Applications (IJCNA)

Published By EverScience Publications

ISSN : 2395-0455

International Journal of Computer Networks and Applications (IJCNA)

International Journal of Computer Networks and Applications (IJCNA)

Published By EverScience Publications

ISSN : 2395-0455

Minimalistic Error via Clibat Algorithm for Attack-Defence Model on Wireless Sensor Networks (WSN)

Author NameAuthor Details

K Abdul Basith, T.N. Shankar

K Abdul Basith[1]

T.N. Shankar[2]

[1]Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur, Andhra Pradesh, India

[2]Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur, Andhra Pradesh, India

Abstract

Wireless Sensor Networks have become the recent trend to effectively solve the problem in medical fields, primarily in agriculture and others in IoT monitoring. The expenses for ease of use in current domains are particular for cost and energy-effective solutions estimating different for different attack types on Wireless Sensor Network designs. Even though the energy, Routing problems are effectively solved, due to its wireless operative effects, the performance, such as speed and attackers, are reduced due to unevaded attacks. Hence, reducing this problem with energy-featured node optimization, network rate, and unevaded or random attack types like wormholes and black holes would implicate a significant problem in real-time modelling. On this basis, we postulate a solution analysis with the CLIBAT algorithm that implicates different possibilities and its probabilistic approaches, considering a proposed hybrid routing protocol on novel attack and defence algorithms to reduce the attack pattern with Wormhole and black hole attacks. In this perspective, an attack and defence pattern with an intuitive approach is implemented via the Improved Conditionally Expected Criteria feature to emphasize the type of attack (Wormhole or black hole attacks). Also, the Defense algorithm on improved sigmoid function on node characteristics is utilized to implicate with minimum distance formulations on the defense model effectively, MATLAB simulations with the solutions on WSN with CLIBAT algorithm inclusive of attack and defences are effectively removed.

Index Terms

Attacks

DDoS

Firefly

Leach

Conditional Logistic Intuitive BAT Algorithm (CLIBAT)

Wireless Sensor Networks (WSN)

Distributed Energy-Efficient Clustering (DEEC)

Least Probability Gradient algorithm (LPA)

Intuitive Cumulative Expected Conditionality (ICEC)

Multi-Point Route (MPR)

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