Abnormal traffic detection system in SDN based on deep learning hybrid models
Software defined network (SDN) provides technical support for network construction in smart cities, However, the openness of SDN is also prone to more network attacks. Traditional abnormal traffic detection methods have complex algorithms and find it difficult to detect abnormalities in the network...
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Zusammenfassung: | Software defined network (SDN) provides technical support for network
construction in smart cities, However, the openness of SDN is also prone to
more network attacks. Traditional abnormal traffic detection methods have
complex algorithms and find it difficult to detect abnormalities in the network
promptly, which cannot meet the demand for abnormal detection in the SDN
environment. Therefore, we propose an abnormal traffic detection system based
on deep learning hybrid model. The system adopts a hierarchical detection
technique, which first achieves rough detection of abnormal traffic based on
port information. Then it uses wavelet transform and deep learning techniques
for fine detection of all traffic data flowing through suspicious switches. The
experimental results show that the proposed detection method based on port
information can quickly complete the approximate localization of the source of
abnormal traffic. the accuracy, precision, and recall of the fine detection are
significantly improved compared with the traditional method of abnormal traffic
detection in SDN. |
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DOI: | 10.48550/arxiv.2311.11550 |