HYBRID INTRUSION DETECTION FOR CLUSTER BASED WIRELESS SENSOR NETWORK
Journal: International Journal of Computer Science and Mobile Applications IJCSMA (Vol.2, No. 11)Publication Date: 2014-11-30
Authors : K.RANJITH SINGH; T.HEMA;
Page : 163-175
Keywords : ;
Abstract
Intrusion Detection System is an important technology in business sector as well as active area of research. It is an important tool for information security. An intrusion detection system is used to detect attacks or intrusions and report these intrusions to the user in order to take evasive action. Most of the existing commercial NIDS products are signature-based but not adaptive. Our paper proposes an Adaptive NIDS using K-Means clustering techniques of Data mining approaches. Definite behaviour of network traffic is precisely captured using Data mining approaches, and the set excavated differentiates between “normal” and “attack” traffic. Current researches comprise of single engine detection systems, whereas our proposed system is constructed by a number of Agents, which are totally different in both training and detecting processes. Using k-means clustering algorithm, respective type of packets is clustered under respective Agents formed after clustering. Each of the Agents is responsible for capturing a network behaviour type and hence the system has strength on detecting different types of attacks as well as ability of detecting new types of attacks. The experimental results show that the network traffic pattern used as reliable agents outperforms from traditional signature-based NIDS.
Other Latest Articles
- Remote Data Back-up and Privacy Preserving Data Distribution in the Cloud: A Review
- Enhanced Approach for Keyword Based Search on Uncertain Graph Data: A Review
- Study of Data Transmission Using Sockets
- Protected Data Transfer in Wireless Sensor Network Using Promiscuous Mode?
- Improved Space Time Block Coding Diversity Technique for Rayleigh Fading Channel in Wireless Systems
Last modified: 2014-11-30 16:19:28