Naïve Bayes Classifier to Mitigate the DDoS Attacks Severity in Ad-Hoc Networks

Main Article Content

Ganesh Karri Reddy
Santhi P Thilagam

Abstract

Ad-Hoc networks are becoming more popular due to their unique characteristics. As there is no centralized control, these networks are more vulnerable to various attacks, out of which Distributed Denial of Service (DDoS) attacks are considered as more severe attacks. DDoS attack detection and mitigation is still a challenging issue in Ad-Hoc Networks. The existing solutions consider the fixed or dynamic threshold value to detect the DDoS attacks without any trained data, and very few existing solutions use machine learning algorithms to detect these attacks. However, existing solutions are inefficient to handle when DDoS attackers’ perform this attack through bursty traffic, packet size, and fake packets flooding. We have proposed DDoS attack severity mitigation solution. Out DDoS mitigation solution consists of new network node authentication module and naïve bayes classifier module to detect and isolate the DDoS attack traffic patterns. Our simulation results show that naïve bayes DDoS attack traffic classification out performs in the hostile environment and secure the legitimate traffic from DDoS attack.

Article Details

How to Cite
Reddy, G. K., & Thilagam, S. P. (2022). Naïve Bayes Classifier to Mitigate the DDoS Attacks Severity in Ad-Hoc Networks. International Journal of Communication Networks and Information Security (IJCNIS), 12(2). https://doi.org/10.17762/ijcnis.v12i2.4574 (Original work published August 23, 2020)
Section
Research Articles
Author Biography

Ganesh Karri Reddy, VIT-AP University

CSE Departmanet