Affiliation:
1. Institute of Graduate, Space Engineering University, Beijing 101416, China
2. Institute of Aerospace Information, Space Engineering University, Beijing 101416, China
Abstract
The widespread adoption of software-defined networking (SDN) technology has brought revolutionary changes to network control and management. Compared to traditional networks, SDN enhances security by separating the control plane from the data plane and replacing the traditional network architecture with a more flexible one. However, due to its inherent architectural flaws, SDN still faces new security threats. This paper expounds on the architecture and security of SDN, analyzes the vulnerabilities of SDN architecture, and introduces common distributed denial of service (DDoS) attacks within the SDN architecture. This article also provides a review of the relevant literature on DDoS attack detection and mitigation in the current SDN environment based on the technologies used, including statistical analysis, machine learning, policy-based, and moving target defense techniques. The advantages and disadvantages of these technologies, in terms of deployment difficulty, accuracy, and other factors, are analyzed. Finally, this study summarizes the SDN experimental environment and DDoS attack traffic generators and datasets of the reviewed literature and the limitations of current defense methods and suggests potential future research directions.
Funder
Science and Technology on Complex Electronic System Simulation Laboratory
Reference120 articles.
1. Chen, J., Zheng, X., and Rong, C. (2015, January 17–19). Survey on software-defined networking. Proceedings of the Second International Conference on Cloud Computing and Big Data in Asia, Huangshan, China.
2. A Survey of Security in Software Defined Networks;Natarajan;IEEE Commun. Surv. Tutor.,2016
3. Ubale, T., and Jain, A.K. (2020). Handbook of Computer Networks and Cyber Security, Springer.
4. Deep learning approaches for detecting DDoS attacks: A systematic review;Mittal;Soft Comput.,2023
5. Ali, T.E., Chong, Y.W., and Manickam, S. (2023). Machine Learning Techniques to Detect a DDoS Attack in SDN: A Systematic Review. Appl. Sci., 13.