APPLIED SCIENCES, cilt.13, sa.6, ss.1-22, 2023 (SCI-Expanded, Scopus)
This paper proposes a hybrid deep learning algorithm for detecting and defending against
DoS/DDoS attacks in software-defined networks (SDNs). SDNs are becoming increasingly popular
due to their centralized control and flexibility, but this also makes them a target for cyberattacks.
Detecting DoS/DDoS attacks in SDNs is a challenging task due to the complex nature of the network
traffic. To address this problem, we developed a hybrid deep learning approach that combines
three types of deep learning algorithms. Our approach achieved high accuracy rates of 99.81% and
99.88% on two different datasets, as demonstrated through both reference-based analysis and practical
experiments. Our work provides a significant contribution to the field of network security, particularly
in the area of SDN. The proposed algorithm has the potential to enhance the security of SDNs and
prevent DoS/DDoS attacks. This is important because SDNs are becoming increasingly important
in today’s network infrastructure, and protecting them from attacks is crucial to maintaining the
integrity and availability of network resources. Overall, our study demonstrates the effectiveness of a
hybrid deep learning approach for detecting DoS/DDoS attacks in SDNs and provides a promising
direction for future research in this area.