Bi-channel hybrid GAN attention based anomaly detection system for multi-domain SDN environment

Author:

Prabu Saranya1,Padmanabhan Jayashree1

Affiliation:

1. Department of Computer Technology, MIT Campus, Anna University, Chennai, Tamil Nadu, India

Abstract

Software-Defined Networking (SDN) is a strategy that leads the network via software by separating its control plane from the underlying forwarding plane. In support of a global digital network, multi-domain SDN architecture emerges as a viable solution. However, the complex and ever-evolving nature of network threats in a multi-domain environment presents a significant security challenge for controllers in detecting abnormalities. Moreover, multi-domain anomaly detection poses a daunting problem due to the need to process vast amounts of data from diverse domains. Deep learning models have gained popularity for extracting high-level feature representations from massive datasets. In this work, a novel deep neural network architecture, supervised learning based LD-BiHGA (Low Dimensional Bi-channel Hybrid GAN Attention) system is designed to learn class-specific features for accurate anomaly detection. Two asymmetric GANs are employed for learning the normal and abnormal network flows separately. Then, to extract more relevant features, a bi-channel attention mechanism is added. This is the first study to introduce an innovative hybrid architecture that merges bi-channel hybrid GANs with attention models for the purpose of anomaly detection in a multi-domain SDN environment that effectively handles real-time unbalanced data. The suggested architecture demonstrates its effectiveness on three benchmark datasets, achieving an average accuracy improvement of 7.225% on balanced datasets and 3.335% on imbalanced datasets compared to previous intrusion detection system (IDS) architectures in the literature.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference39 articles.

1. Software defined networking architecture, security and energy efficiency: A survey;Danda Rawat;IEEE Communications Surveys Tutorials,2017

2. Multi-domain software defined networking: Research status and challenges;Franciscus Wibowo;Journal of Network and Computer Applications,2017

3. A review on deeplearning techniques for iot data;Lakshmanna;Electronics,2022

4. Machine learning and deep learning methods for intrusion detection systems: A survey;Liu;Applied Sciences

5. Information flow in deep restricted boltzmann machines: An analysis of mutual information between inputs and outputs;Vera;Neurocomputing,2022

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