location:Home > 2024 Vol.7 Aug.N04 > Adaptive Packet Marking Based Traceability of DDOS Attacks on Communication Networks

2024 Vol.7 Aug.N04

  • Title: Adaptive Packet Marking Based Traceability of DDOS Attacks on Communication Networks
  • Name:  Yan Zhang
  • Company: Chengdu College of University of Electronic Science and Technology of China,ChengDu 611731,China
  • Abstract:

    Influenced by the diversity of attacking techniques, when tracing and localizing DDOS attacks on communication networks, the traceability accuracy is usually poor due to the lack of calculating the number of locally sent packets. In this regard, a DDOS attack traceability method for communication networks based on adaptive packet labeling is proposed. A distributed denial-of-service detection framework based on software-defined networks is constructed by introducing a smoothing model and utilizing the two modules of DDOS triggering and attack detection. And according to the changes of traceability test requirements and standards, the multi-target adaptive packet labeling domain is divided, the number of locally sent packets in the communication network is calculated, and finally the attack traceability model is constructed. In the experiment, the proposed method is verified for traceability accuracy. Finally, the experimental comparison results can prove that when the proposed method is used for DDOS attack traceability, the algorithm has a high traceability recognition rate and has a more ideal attack traceability effect.


  • Keyword: adaptive packet labeling; communication networks; DDOS; attack traceability;
  • DOI: 10.12250/jpciams2024090815
  • Citation form: 名字.题目[J]. Computer Informatization and Mechanical System,2024,Vol.7,pp.62-66
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