Title of article :
Anomaly-based Detection of Black Hole Attacks in WSN and MANET Utilizing Quantum-metaheuristic Algorithms
Author/Authors :
Hosseini Shirvani, Mirsaeid Department of Computer Engineering - Sari Branch - Islamic Azad University - Sari - IRAN , Akbarifar, Amir Department of Computer Engineering - Sari Branch - Islamic Azad University - Sari - IRAN
Abstract :
Abstract- Wireless sensor network (WSN) comprises various distributed
nodes that are physically separated. Nodes are constantly applying for
sensing their environment. If the information sensitivity coefficient is
very high, data should be conveyed continually and also with
confidentially. WSNs have many vulnerability features because of data
transferring on the open air, self-organization without reformed
structure, bounded range of sources and memory, and limited
computing capabilities. Therefore, the implementation of security
protocols in WSN is inescapable. According to the resemblance between
WSN and biotic reaction to the real menace in nature, bio-inspired
approaches have variant rules in computer network investigations. In
this paper, we exploited an ant colony optimization (ACO) algorithm
based on Ad-hoc On-Demand Distance Vector (AODV) protocol for
detection of Black hole attacks. Finally, the Grover quantum
metaheuristic algorithm is applied to optimize attack paths’ detection.
The results gained from extensive simulations in WSN proved that the
proposed approach is capable of improving some fundamental network
parameters such as throughput, end-to-end delay, and packet delivery
ratio in comparison with other approaches.
Keywords :
Security , Meta-heuristic Algorithm , Black hole Attack , Ant Colony Optimization (ACO) , Quantum Algorithm
Journal title :
Journal of Communication Engineering