Abstract:
The explosion in the number of IP-based systems and IoT devices has created significant security and traffic engineering challenges on the Internet. The current Internet ...Show MoreMetadata
Abstract:
The explosion in the number of IP-based systems and IoT devices has created significant security and traffic engineering challenges on the Internet. The current Internet architecture is not optimised to handle the unprecedented amounts of traffic generated by these huge amount of interconnected devices as it was designed based on a simple model using an intelligent edge and a dumb core, providing a best effort routing service. The surge in traffic poses several risks and has raised the need for new protocols and approaches to keep the internet manageable and safe. Software-defined networking (SDN) has therefore, emerged as a promising solution for network management. By enabling the separation between the data plane and control plane, SDN overcomes the challenges of traditional networks by providing programmability and dynamism. SDN further introduces intelligent network centralisation to improve routing optimisation. However, because of SDN's centralised architecture, the central controller has became as single point of failure subjecting it to cyber-assaults, DDoS to be specific. In this paper, we proposed a hybrid deep learning model as a solution to detect DDoS attacks on SDNs. The result shows that the proposed LSTM-RNN hybrid model outperformed the single models as well as some existing hybrid models with an accuracy of 99.33% on the CICIDS-2017 dataset. Due to the high dimensionality of network traffic data, and sophisticated attack patterns, detecting malicious traffic with a single classifier is becoming a challenge. Hybrid methods are therefore becoming popular as they can provide better generalization which ultimately leads to improved robustness.
Published in: 2023 International Conference on Emerging Trends in Networks and Computer Communications (ETNCC)
Date of Conference: 16-18 August 2023
Date Added to IEEE Xplore: 24 October 2023
ISBN Information: