一种灵活高效的分布式入侵检测系统报警关联平台

S. Roschke, Feng Cheng, C. Meinel
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引用次数: 32

摘要

入侵检测系统(IDS)用于检测网络通信和主机上的恶意行为,在实践中得到了广泛的应用。假阳性警报问题是大多数IDS方法普遍存在的问题。解决这个问题的解决方案是警报的相关性和聚类。为了满足实际需求,这个过程需要尽快完成,这是一项具有挑战性的任务,因为在大规模分布式IDS部署中产生的警报数量非常高。我们认为数据存储和处理算法是影响聚类和关联性能的最重要因素。在一个可扩展的IDS相关平台中,提出并实现了基于内存支持算法和面向列的数据库的相关和聚类。使用面向列的数据库、内存警报存储和基于内存的索引表可以显著提高性能。在该平台上,可以对不同类型的相关模块进行集成和比较。接收器的插件概念提供了各种传感器和附加IDS管理系统的灵活集成。该平台可以分布在多个处理单元上,以共享内存和处理能力。标准化接口的设计目的是为最终用户提供统一的结果报告视图。通过不同的告警存储方法、不同的简单算法、本地部署和分布式部署,验证了该平台的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Flexible and Efficient Alert Correlation Platform for Distributed IDS
Intrusion Detection Systems (IDS) have been widely deployed in practice for detecting malicious behavior on network communication and hosts. The problem of false-positive alerts is a popular existing problem for most of IDS approaches. The solution to address this problem is correlation and clustering of alerts. To meet the practical requirements, this process needs to be finished as soon as possible, which is a challenging task as the amount of alerts produced in large scale deployments of distributed IDS is significantly high. We identify the data storage and processing algorithms to be the most important factors influencing the performance of clustering and correlation. We propose and implement the utilization of memory-supported algorithms and a column-oriented database for correlation and clustering in an extensible IDS correlation platform. The utilization of the column-oriented database, an In-Memory Alert Storage, and memory-based index tables leads to significant improvements on the performance. Different types of correlation modules can be integrated and compared on this platform. A plugin concept for Receivers provides flexible integration of various sensors and additional IDS management systems. The platform can be distributed over multiple processing units to share memory and processing power. A standardized interface is designed to provide a unified view of result reports for end users. The efficiency of the proposed platform is tested by practical experiments with several alert storage approaches, different simple algorithms, as well as local and distributed deployment.
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