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Intrusion detection in software defined network using deep learning approaches.

M Sami Ataa1, Eman E Sanad2, Reda A El-Khoribi2

  • 1Fuclty of Computers and Artificial Intelligence, Cairo University, Giza, Egypt. m.ataa@fci-cu.edu.eg.

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This study developed Deep Learning (DL) models for Software-Defined Networking (SDN) intrusion detection. The Transformer model achieved 99.02% accuracy, enhancing SDN network cybersecurity.

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Area of Science:

  • Cybersecurity
  • Machine Learning
  • Computer Networks

Background:

  • Software-Defined Networking (SDN) offers programmability and centralized control but introduces new vulnerabilities.
  • Machine Learning (ML), particularly Deep Learning (DL), is increasingly applied to address SDN security challenges.
  • Intrusion Detection Systems (IDS) are critical for identifying and mitigating threats in SDN environments.

Purpose of the Study:

  • To develop and compare advanced Deep Learning (DL) models for enhanced intrusion detection in SDN networks.
  • To evaluate the performance of hybrid CNN-LSTM and Transformer encoder-only architectures for SDN security.
  • To investigate the impact of feature reduction and attack class merging on model accuracy.

Main Methods:

  • Developed and compared two DL models: a hybrid CNN-LSTM architecture and a Transformer encoder-only architecture.
  • Utilized the InSDN dataset for training and testing, focusing on the SDN controller.
  • Evaluated models using accuracy, precision, recall, and F1 Score, including experiments with reduced features and merged attack classes.

Main Results:

  • The Transformer model achieved 99.02% accuracy with 48 features; the CNN-LSTM model achieved 99.01%.
  • Feature reduction impacted model performance, with the CNN-LSTM model reaching 99.19% accuracy using 6 features after merging attack classes.
  • Binary classification (merging all attacks) further increased accuracy for both models, enhancing state-of-the-art results.

Conclusions:

  • Advanced DL models, particularly Transformer and CNN-LSTM architectures, show high efficacy in detecting intrusions in SDN networks.
  • Feature engineering and strategic merging of attack classes can significantly improve IDS performance.
  • The developed models offer a robust solution for enhancing SDN network cybersecurity.