Design and Development of Suginer Filter for Intrusion Detection Using Real Time Network Data

Design and Development of Suginer Filter for Intrusion Detection Using Real Time Network Data

Revathi Sujendran and Malathi Arunachalam

Department of Computer Science, Government Arts College, India

Abstract: By rapid use of the Internet and computer network all over the world makes security a major issues, so using the intrusion-detection system has become more important. All the same, the primary issues of Intrusion-Detection System (IDS) are generating high false alarm rate and fails to detect attacks, which make system security more vulnerable. This paper proposed a new concept of using Suginer Filter to identify IDS. The Takagi-Sugeno fuzzy model is structured based on Neuro-fuzzy method to generate fuzzy rules and wiener filter is used to filter out attack as a noise signal using fuzzy rule generation. These two methods are combined to detect intrusive behavior of the system. The proposed suginer filter (Sugeno+Wiener) uses completely a different research structure to identify attacks and the experiment was evaluated on live network data collected, which shows that the proposed system achieves approximately 98.46% of accuracy and reduce false alarm rate to 0.08% in detecting different real time attacks. From the obtained result it’s clear that the proposed system performs better when compared with other existing machine learning techniques.

Keywords: Intrusion detection, wiener filter, artificial neural network, knowledge discovery dataset, network socket layer, defense advanced research projects agency, support vector machine.

Received October 10, 2014; accepted September 7, 2015

Full text 

 
Read 1294 times
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…