利用修正cicmeter的主动和空闲特性和统计方法进行DDoS检测

B. H. Ali, N. Sulaiman, S.A.R. Al-Haddad, R. Atan, S. L. Hassan
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引用次数: 0

摘要

分布式拒绝服务(DDoS)攻击是针对服务器的最危险的攻击之一。这种攻击的主要后果是通过击倒目标受害者来阻止用户获得合法服务。CICFlowMeter工具根据报文生成双向流。每个流生成83个不同的特性。研究重点为8个特征,分别为活动min (f1)、活动mean (f2)、活动max (f3)、活动std (f4)、空闲min (f5)、空闲mean (f6)、空闲max (f7)、空闲std (f8)。CICFlowMeter工具存在几个影响DDoS攻击检测精度的问题。本研究实现了基于空闲和主动特征的香农熵和序列概率比检验(SE-SPRT)方法。介绍了原CICFlowMeter工具存在的问题,并探讨了原CICFlowMeter工具与修订版CICFlowMeter工具的差异。利用DARPA数据库和混淆矩阵对检测技术进行了评价,并对两个版本的CICFlowMeter进行了比较。该检测方法检测海王星和蓝精灵攻击,与使用修订版CICFlowMeter生成流量相比,具有更高的准确度、f1评分、灵敏度、特异性和精密度。但是,该检测方法无法检测到海王星攻击,在使用原始版本生成流时,缺失率较高,准确率较低,f1评分较低,特异性较低,精度较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DDoS Detection Using Active and Idle Features of Revised CICFlowMeter and Statistical Approaches
Distributed Denial of services (DDoS) attack is one of the most dangerous attacks that targeted servers. The main consequence of this attack is to prevent users from getting their legitimate services by bringing down targeted victim. CICFlowMeter tool generates bi-directional flows from packets. Each flow generates 83 of different features. The research focuses on 8 features which are active min (f1), active mean (f2), active max (f3), active std (f4), idle min (f5), idle mean (f6), idle max (f7), and idle std (f8). CICFlowMeter tool has several problems that affected on the detection accuracy of DDoS attacks. The idle and active based feature of Shannon entropy and sequential probability ratio test (SE-SPRT) approach was implemented in this research. The problems of original CICFlowMeter were presented, and the differences between original and revised version of CICFlowMeter tool were explored. The DARPA database and confusion matrix were used to evaluate the detection technique and present the comparison between two versions of CICFlowMeter. The detection method detected neptune and smurf attacks and had higher accuracy, f1-score, sensitivity, specificity, and precision when revised version of CICFlowMeter used to generate flows. However, the detection method failed to detect neptune attack and had higher miss-rate, lower accuracy, lower f1-score, and lower specificity, and lower precision when original version used in generating flows.
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