K.Murugesan, P.Kanagaraj, S.Jagatheswaran, S.Periyasamy, K.S.R College of Engineering, Tamilnadu, India.
DOI : 01.0401/ijaict.2014.01.06
International Journal of Advanced Information and Communication Technology
Received On : March 13, 2014
Revised On : April 21, 2014
Accepted On : May 18, 2014
Published On : June 05, 2014
Volume 02, Issue 02
Pages : 036-041
Abstract
Mobile impromptu Networks has more difficult vulnerabilities compared with wired networks. Mobile impromptu networking (MANET) has become a vital technology in current years attributable to the speedy proliferation of wireless devices. They’re extremely at risk of attacks thanks to the open medium, dynamically ever-changing topology and lack of centralized watching purpose. It’s vital to look new design and mechanisms to safeguard these networks. Intrusion detection system (IDS) tools are appropriate for securing such networks. The most tasks of IDS is to get the intrusion from collected information. a number of the options of collected information is also redundant or contribute very little to the detection method. Therefore it's essential to pick out the vital options to extend the detection rate. Most of the present intrusion detection systems detect the intrusion by victimization sizable amount of knowledge options collected from network. During this work, we have a tendency to propose anomaly primarily based intrusion observation system to detect the malicious activities by collection statistics from network. Conjointly we have a tendency to use SVM machine learning technique associate degreed Rough pure mathematics that are wont to observe the attacks in an economical approach. Rough pure mathematics preprocesses the feature information to scale back the procedure complexness. The support vector machine is trained by victimization feature set from the Rough pure mathematics for sleuthing abnormal behavior.
Keywords
Mobile ad hoc network, attacks, feature selection, ns2 simulator, support vector machine, rough set theory, intrusion detection system, Rosetta.
Cite this article
K.Murugesan, P.Kanagaraj, S.Jagatheswaran, S.Periyasamy, “A Resourceful Intrusion Detection System for MANET Using Rough Set Theory and Support Vector Machine” INTERNATIONAL JOURNAL OF ADVANCED INFORMATION AND COMMUNICATION TECHNOLOGY, pp.036-041, June 05, 2014.
Copyright
© 2014 K.Murugesan, P.Kanagaraj, S.Jagatheswaran, S.Periyasamy. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.