Anand Anbalagan

Work place: Department of Electrical and Electronics Technology, Technical Vocational Training Institute, Addis Ababa, Ethiopia

E-mail: anand.anbalagan@ftveti.edu.et

Website:

Research Interests:

Biography

Dr. Anand Anbalagan received M.E Communication System from Thiagarajar College of Engineering, Madurai, in 2007 and Ph.D. degree from Anna University, Chennai in 2017 in the specialization of Information and Communication Engineering. He has 16 years of teaching and 7 years of research experience. Currently he is working as Associate Professor in the department of Electrical and Electronics Technology, TVTI, Addis Ababa. He has published more than 25 international journals and conferences and one of his patents granted by Australia. He is a Member of IEEE and Life member of Institution of Engineers, IEANG and ISTE. He served as a speaker and resource person for various workshops and webinars in communication engineering areas. His research areas are Artificial Intelligence & Machine Learning Applications, Channel coding, and DNA storage systems.

Author Articles
Modified CNN Model for Network Intrusion Detection and Classification System Using Local Outlier Factor-based Recursive Feature Elimination

By Kondru Mounika P. Venkateswara Rao Anand Anbalagan

DOI: https://doi.org/10.5815/ijcnis.2025.01.07, Pub. Date: 8 Feb. 2025

An intrusion detection system (IDS) is either a part of a software or hardware environment that monitors data and analyses it to identify any attacks made against a system or a network. Traditional IDS approaches make the system more complicated and less efficient, because the analytical properties process is difficult and time-consuming. This is because the procedure is complex. Therefore, this research work focuses on a network intrusion detection and classification (NIDCS) system using a modified convolutional neural network (MCNN) with recursive feature elimination (RFE). Initially, the dataset is balanced with the help of the local outlier factor (LOF), which finds anomalies and outliers by comparing the amount of deviation that a single data point has with the amount of deviation that its neighbors have. Then, a feature extraction selection approach named RFE is applied to eliminate the weakest features until the desired number of features is achieved. Finally, the optimal features are trained with the MCNN classifier, which classifies intrusions like probe, denial-of-service (DoS), remote-to-user (R2U), user-to-root (U2R), and identifies normal data. The proposed NIDCS system resulted in higher performance with 99.3% accuracy and a 3.02 false alarm rate (FAR) as equated to state-of-the-art NIDCS approaches such as deep neural networks (DNN), ResNet, and gravitational search algorithms (GSA).

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