Title of article :
ALightweight Anomaly Detection Model usingSVMfor WSNs in IoT through a Hybrid Feature Selection Algorithm based onGAand GWO
Author/Authors :
Davahli, Azam Department of Computer Engineering - Qom Branch Islamic Azad University, Qom, Iran , Shamsi, Mahboubeh Faculty of Electrical and Computer Engineering - Qom University of Technology, Qom, Iran , Abaei, Golnoush Faculty of Electrical, Computer, and Biomedical Engineering - Shahabdanesh University, Qom, Iran
Abstract :
As a result of an incredibly fast growth of the number and diversity of smart
devices connectable to the internet, commonly through open wireless sensor
networks (WSNs) in internet of things (IoT), the access of attackers to the
network trac in the form of intercepting, eavesdropping and rebroadcasting
has become much easier. Anomaly or intrusion detection system (IDS) is an
ecient security mechanism, however despite the maturity of anomaly detection
technologies for wired networks, current technologies with high computational
complexity are improper for resource-limited WSNs in IoT and they also fail
to detect new WSN attacks. Furthermore, dealing with the huge amount of
intrusion wireless trac collected by sensors, causing slow detecting process,
higher resource usage and inaccurate detection. Hence, considering WSN
limitations for developing an IDS in IoT, establishes a signicant challenge for
security researchers. This paper proposes a new model to develop a support
vector machine (SVM)-based lightweight IDS (LIDS) using combination
concepts of genetic algorithm (GA) and mathematical equations of grey wolf
optimizer (GWO) which is called GABGWO. The GABGWO through applying
two new crossover and mutation operators tries to nd the most relevant trac
features and eliminate worthless ones, in order to increase the performance
of the LIDS. The performance of LIDS is evaluated using AWID real-world
wireless dataset under two scenarios with and without using GABGWO. The
results showed a promising behavior of the proposed GABGWO algorithm in
choosing optimal tracs, decreasing the computational costs and providing
high accuracies for LIDS. The hybrid algorithm is also compared to pure GA
and GWO and other recent methods and it is found that its performance is
better than them.
Keywords :
Support Vector Machine (SVM) , Anomaly Detection , Internet of Things (IoT) , Wireless Networks , Genetic Algorithm (GA) , Grey Wolf Optimizer (GWO) , Metaheuristic Algorithms , Wrapper Feature Selection
Journal title :
Journal of Computing and Security