Behavioral Traffic Monitoring and Analysis in Software-Defined Networks

Author
Keywords
Abstract

In Software-Defined Networking (SDN), the centralized control model introduces both operational flexibility and new security challenges. While much research has focused on detection-based solutions, this paper presents a monitoring-centric framework for analyzing traffic behavior in SDN environments without relying on classification models. Using both the InSDN public dataset and a custom-generated dataset in a Mininet-Ryu testbed, traffic features such as flow duration, destination port entropy, and controller packet-in rates were examined. Results demonstrate that behavioral anomalies, such as entropy drops and packet-in rate spikes, can be effectively identified through statistical and control-plane analysis. The findings validate the feasibility of behavior-based traffic monitoring as a foundation for proactive network management.

Year of Conference
2025
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISBN Number
9798331527983 (ISBN)
URL
https://ieeexplore.ieee.org/document/11158942
DOI
10.1109/ICCTDC64446.2025.11158942
Alternate Title
Int. Conf. Comput. Technol. Data Commun., ICCTDC
Conference Proceedings
Download citation
Cits
0
CIT

For admissions and all other information, please visit the official website of

Cambridge Institute of Technology

Cambridge Group of Institutions

Contact

Web portal developed and administered by Dr. Subrahmanya S. Katte, Dean - Academics.

Contact the Site Admin.