一种新颖的在线CEP学习引擎

Erick Petersen, Marco Antonio To, S. Maag
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引用次数: 10

摘要

近年来,无线自组织网络的应用有所增加。研究的很大一部分集中在移动自组织网络(manet)上,因为它在车载网络、战场通信等方面的实现。这些点对点网络通常测试新的通信协议,但忽略了网络安全部分。在有线网络中可能发生大范围的攻击,其中一些攻击在manet中更具破坏性。由于这些网络的特点,传统的攻击流量检测方法是无效的。入侵检测系统是建立在多种检测技术的基础上的,异常检测是其中最重要的一种。仅基于过去攻击签名的入侵防御系统效果较差,如果这些入侵防御系统是集中式的,效果会更差。我们的工作重点是在检测引擎中添加一种新颖的机器学习技术,该技术以在线方式识别攻击流量(而不是存储和分析之后),在飞行中重写IDS规则。使用Dockemu仿真工具,使用Linux容器、IPv6和OLSR作为路由协议进行了实验,得到了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel online CEP learning engine for MANET IDS
In recent years the use of wireless ad hoc networks has seen an increase of applications. A big part of the research has focused on Mobile Ad Hoc Networks (MAnETs), due to its implementations in vehicular networks, battlefield communications, among others. These peer-to-peer networks usually test novel communications protocols, but leave out the network security part. A wide range of attacks can happen as in wired networks, some of them being more damaging in MANETs. Because of the characteristics of these networks, conventional methods for detection of attack traffic are ineffective. Intrusion Detection Systems (IDSs) are constructed on various detection techniques, but one of the most important is anomaly detection. IDSs based only in past attacks signatures are less effective, even more if these IDSs are centralized. Our work focuses on adding a novel Machine Learning technique to the detection engine, which recognizes attack traffic in an online way (not to store and analyze after), re-writing IDS rules on the fly. Experiments were done using the Dockemu emulation tool with Linux Containers, IPv6 and OLSR as routing protocol, leading to promising results.
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