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基于GAN和元学习的伪装流量生成模型

邹元怀 张淑芬 张祖篡 高瑞 马将

郑州大学学报(理学版)2026,Vol.58Issue(1):35-42,8.
郑州大学学报(理学版)2026,Vol.58Issue(1):35-42,8.DOI:10.13705/j.issn.1671-6841.2024118

基于GAN和元学习的伪装流量生成模型

The Pseudorandom Traffic Generation Model Based on GAN and Meta-learning

邹元怀 1张淑芬 2张祖篡 1高瑞 1马将3

作者信息

  • 1. 华北理工大学 理学院 河北 唐山 063210||河北省数据科学与应用重点实验室 河北 唐山 063210
  • 2. 华北理工大学 理学院 河北 唐山 063210||河北省数据科学与应用重点实验室 河北 唐山 063210||唐山市数据科学重点实验室 河北 唐山 063210
  • 3. 华北理工大学 理学院 河北 唐山 063210
  • 折叠

摘要

Abstract

The deep learning-based malicious traffic detection model is susceptible to adversarial attacks.In order to uncover security vulnerabilities with such models and find ways to enhance the robustness,an adversarial sample generation model(ReN-GAN)was proposed.Based on the principles of generative adversarial networks(GANs),the model could automatically generate relevant disguised traffic based on traffic features and utilize the transferability of adversarial samples to achieve black-box attacks.By intro-ducing momentum iteration methods and adding constraints on perturbations,the generalization capability of disguised traffic adversarial samples while ensuring the functionality of the original traffic was en-hanced.During training,the model was optimized by integrating meta-learning theory,enabling the tar-get integrated model to capture the common decision boundaries of various models more effectively and enhancing the transferability of generated adversarial samples.Experimental results showed that the ad-versarial samples generated by the ReN-GAN model,while preserving the characteristics of the original traffic,achieved an average evasion rate of 54.1%on black-box detection models,significantly reducing the generation time compared to other methods.Furthermore,when trained on classifiers based on DNN,the ReN-GAN model required only five iterations to generate disguised traffic with an evasion rate of 62%,greatly reducing the interaction times.

关键词

生成对抗网络/恶意流量/对抗样本/元学习/黑盒攻击

Key words

generative adversarial network/malicious traffic/adversarial samples/meta-learning/black-box attack

分类

信息技术与安全科学

引用本文复制引用

邹元怀,张淑芬,张祖篡,高瑞,马将..基于GAN和元学习的伪装流量生成模型[J].郑州大学学报(理学版),2026,58(1):35-42,8.

基金项目

国家自然科学基金项目(U20A20179) (U20A20179)

郑州大学学报(理学版)

1671-6841

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