基于TCP连接参数的ddos攻击检测

Michael Siracusano, S. Shiaeles, B. Ghita
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引用次数: 20

摘要

低速率应用层分布式拒绝服务(ddos)攻击既强大又隐蔽。它们迫使易受攻击的web服务器向攻击者打开所有可用的连接,拒绝向真实用户提供资源。缓解建议侧重于可能降低合法连接服务质量的解决方案。此外,如果没有准确的检测机制,分布式攻击可以绕过这些防御。本文提出了一种基于恶意TCP流特征的ddos攻击检测方法。研究将使用两个数据集的组合进行:一个来自模拟网络,另一个来自公开的CIC DoS数据集。两者都包含攻击slowread, slowwheaders和slowbody,以及合法的网页浏览。从所有连接中提取TCP流特征。实验使用六种有监督的人工智能算法对合法流量的攻击进行分类。决策树和kNN可准确分类高达99.99%的流量,假阳性和假阴性率极低,证明了AI在LDDoS检测中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of LDDoS Attacks Based on TCP Connection Parameters
Low-rate application layer distributed denial of service (LDDoS) attacks are both powerful and stealthy. They force vulnerable webservers to open all available connections to the adversary, denying resources to real users. Mitigation advice focuses on solutions that potentially degrade quality of service for legitimate connections. Furthermore, without accurate detection mechanisms, distributed attacks can bypass these defences. A methodology for detection of LDDoS attacks, based on characteristics of malicious TCP flows, is proposed within this paper. Research will be conducted using combinations of two datasets: one generated from a simulated network, the other from the publically available CIC DoS dataset. Both contain the attacks slowread, slowheaders and slowbody, alongside legitimate web browsing. TCP flow features are extracted from all connections. Experimentation was carried out using six supervised AI algorithms to categorise attack from legitimate flows. Decision trees and kNN accurately classified up to 99.99% of flows, with exceptionally low false positive and false negative rates, demonstrating the potential of AI in LDDoS detection.
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