Network Anomaly Traffic Detection UsingWGAN-CNN-BiLSTM in Big Data Cloud–EdgeCollaborative Computing Environment


Yue Wang, Journal of Information Processing Systems Vol. 20, No. 3, pp. 375-390, Jun. 2024  

https://doi.org/10.3745/JIPS.01.0105
Keywords: Abnormal Traffic Mining, Big data, BiLSTM, Cloud–Edge Collaborative Computing, CNN, Wasserstein Generative Adversarial Networks
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Abstract

Edge computing architecture has effectively alleviated the computing pressure on cloud platforms, reduced network bandwidth consumption, and improved the quality of service for user experience; however, it has also introduced new security issues. Existing anomaly detection methods in big data scenarios with cloud– edge computing collaboration face several challenges, such as sample imbalance, difficulty in dealing with complex network traffic attacks, and difficulty in effectively training large-scale data or overly complex deeplearning network models. A lightweight deep-learning model was proposed to address these challenges. First, normalization on the user side was used to preprocess the traffic data. On the edge side, a trained Wasserstein generative adversarial network (WGAN) was used to supplement the data samples, which effectively alleviates the imbalance issue of a few types of samples while occupying a small amount of edge-computing resources. Finally, a trained lightweight deep learning network model is deployed on the edge side, and the preprocessed and expanded local data are used to fine-tune the trained model. This ensures that the data of each edge node are more consistent with the local characteristics, effectively improving the system's detection ability. In the designed lightweight deep learning network model, two sets of convolutional pooling layers of convolutional neural networks (CNN) were used to extract spatial features. The bidirectional long short-term memory network (BiLSTM) was used to collect time sequence features, and the weight of traffic features was adjusted through the attention mechanism, improving the model's ability to identify abnormal traffic features. The proposed model was experimentally demonstrated using the NSL-KDD, UNSW-NB15, and CIC-ISD2018 datasets. The accuracies of the proposed model on the three datasets were as high as 0.974, 0.925, and 0.953, respectively, showing superior accuracy to other comparative models. The proposed lightweight deep learning network model has good application prospects for anomaly traffic detection in cloud–edge collaborative computing architectures.


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Cite this article
[APA Style]
Wang, Y. (2024). Network Anomaly Traffic Detection UsingWGAN-CNN-BiLSTM in Big Data Cloud–EdgeCollaborative Computing Environment. Journal of Information Processing Systems, 20(3), 375-390. DOI: 10.3745/JIPS.01.0105.

[IEEE Style]
Y. Wang, "Network Anomaly Traffic Detection UsingWGAN-CNN-BiLSTM in Big Data Cloud–EdgeCollaborative Computing Environment," Journal of Information Processing Systems, vol. 20, no. 3, pp. 375-390, 2024. DOI: 10.3745/JIPS.01.0105.

[ACM Style]
Yue Wang. 2024. Network Anomaly Traffic Detection UsingWGAN-CNN-BiLSTM in Big Data Cloud–EdgeCollaborative Computing Environment. Journal of Information Processing Systems, 20, 3, (2024), 375-390. DOI: 10.3745/JIPS.01.0105.