SDN环境下针对应用层DoS攻击的鲁棒自我防护

Chafika Benzaïd, M. Boukhalfa, T. Taleb
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引用次数: 15

摘要

5G预期的高带宽和预期的大量连接设备将为越来越多的复杂攻击打开大门,例如应用层DDoS攻击。应用层DDoS攻击由于其隐蔽性和模仿真实行为的能力,检测和缓解起来很复杂。在这项工作中,我们提出了一个强大的应用层DDoS自我保护框架,该框架能够利用深度学习(DL)和SDN使能器对应用层DDoS攻击进行完全自主的检测和缓解。DL模型已经被证明容易受到对抗性攻击,这些攻击旨在欺骗DL模型做出错误的决定。为了克服这个问题,我们建立了一个基于dl的应用层DDoS检测模型,该模型对对抗性示例具有鲁棒性。性能结果表明,即使在存在对抗性攻击的情况下,该框架也能有效地防御应用层DDoS攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Self-Protection Against Application-Layer (D)DoS Attacks in SDN Environment
The expected high bandwidth of 5G and the envisioned massive number of connected devices will open the door to increased and sophisticated attacks, such as application-layer DDoS attacks. Application-layer DDoS attacks are complex to detect and mitigate due to their stealthy nature and their ability to mimic genuine behavior. In this work, we propose a robust application-layer DDoS self-protection framework that empowers a fully autonomous detection and mitigation of the application-layer DDoS attacks leveraging on Deep Learning (DL) and SDN enablers. The DL models have been proven vulnerable to adversarial attacks, which aim to fool the DL model into taking wrong decisions. To overcome this issue, we build a DL-based application-layer DDoS detection model that is robust to adversarial examples. The performance results show the effectiveness of the proposed framework in protecting against application-layer DDoS attacks even in the presence of adversarial attacks.
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