Distributed abnormal traffic detection method for SDN based on deep learning
Addressing the high computational expenses, congested shared links, and propensity for single-point failures in network devices that can lead to a degradation of software defined network (SDN) service quality or even network paralysis during the execution of large-scale SDN detection tasks by tradit...
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Main Authors: | , , , , |
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Format: | Article |
Language: | zho |
Published: |
Editorial Department of Journal on Communications
2024-11-01
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Series: | Tongxin xuebao |
Subjects: | |
Online Access: | http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024199/ |
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Summary: | Addressing the high computational expenses, congested shared links, and propensity for single-point failures in network devices that can lead to a degradation of software defined network (SDN) service quality or even network paralysis during the execution of large-scale SDN detection tasks by traditional abnormal traffic detection methods, a distributed abnormal traffic detection method for SDN based on deep learning was proposed. This method constructed a “one-to-many” distributed generative adversarial network (D-VAE-WGAN) with a discriminator deployed on a cloud server and multiple generators deployed on SDN controllers. Utilizing normal traffic samples, collaborative training of the D-VAE-WGAN was completed, resulting in independent abnormal traffic detection proxies on controllers, enabling distributed detection of abnormal traffic within each controller's subnet in a large-scale SDN environment. Experimental results indicate that this method can rapidly and accurately detect abnormal samples in large-scale SDN, outperforming traditional methods in detection metrics such as accuracy and recall rate, and can detect unknown anomalies. |
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ISSN: | 1000-436X |