كليدواژه :
Intrusion Detection , Routing attacks , Genetic algorithm , artificial immune system , ad hoc network
چكيده فارسي :
Mobile ad hoc network (MANET) is a self-created and
self organized network of wireless mobile nodes. Due to special
characteristics of these networks, security issue is a difficult task
to achieve. Hence, applying current intrusion detection
techniques developed for fixed networks is not sufficient for
MANETs. In this paper, we proposed an approach based on
genetic algorithm (GA) and artificial immune system (AIS),
called GAAIS, for dynamic intrusion detection in AODV-based
MANETs. GAAIS is able to adapting itself to network topology
changes using two updating methods: partial and total. Each
normal feature vector extracted from network traffic is
represented by a hypersphere with fix radius. A set of spherical
detector is generated using NicheMGA algorithm for covering
the nonself space. Spherical detectors are used for detecting
anomaly in network traffic. The performance of GAAIS is
evaluated for detecting several types of routing attacks simulated
using the NS2 simulator, such as Flooding, Blackhole, Neighbor,
Rushing, and Wormhole. Experimental results show that GAAIS
is more efficient in comparison with similar approaches