多级入侵检测系统(ML-IDS)

Y. Al-Nashif, Aarthi Arun Kumar, S. Hariri, Yi Luo, F. Szidarovszky, Guangzhi Qu
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引用次数: 65

摘要

随着以网络为中心的系统部署的增加,网络攻击的强度和复杂性也成比例地增加。攻击检测技术大致可分为基于签名、基于分类和基于异常三种。本文提出了一种多级入侵检测系统(ML-IDS),该系统利用自主计算实现了对ML-IDS的自动化控制和管理。这种自动化使ML-IDS能够检测网络攻击并主动保护它们。ML-IDS采用流量、报文头和负载三个粒度级别对网络流量进行检测和分析,并采用高效的融合决策算法,提高整体检测率,最大限度地减少误报的发生。我们单独评估了针对各种网络攻击的每种方法,然后将这些方法的结果与组合决策融合算法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Level Intrusion Detection System (ML-IDS)
As the deployment of network-centric systems increases, network attacks are proportionally increasing in intensity as well as complexity. Attack detection techniques can be broadly classified as being signature-based, classification-based, or anomaly-based. In this paper we present a multi level intrusion detection system (ML-IDS) that uses autonomic computing to automate the control and management of ML-IDS. This automation allows ML-IDS to detect network attacks and proactively protect against them. ML-IDS inspects and analyzes network traffic using three levels of granularities (traffic flow, packet header, and payload), and employs an efficient fusion decision algorithm to improve the overall detection rate and minimize the occurrence of false alarms. We have individually evaluated each of our approaches against a wide range of network attacks, and then compared the results of these approaches with the results of the combined decision fusion algorithm.
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