基于流的网络监控与威胁检测系统

Zhijiang Chen, Hanlin Zhang, W. G. Hatcher, James H. Nguyen, Wei Yu
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引用次数: 13

摘要

网络威胁不断增加的趋势使网络安全成为保护个人和私人知识产权的重中之重。为了提供最高度安全的网络环境,网络流量监控和威胁检测系统必须处理来自企业网络中不同分支位置的实时数据。虽然大量的研究已经产生了实时威胁检测系统,但在本文中,我们解决了处理企业系统的大量网络流量数据的问题,同时提供实时监控和检测仍然没有解决。特别地,我们介绍并评估了一种基于流的威胁检测系统,该系统可以利用基于流的聚类算法检测异常网络活动,快速实时分析高强度的网络流量数据。开发的系统将Flume、Sharp和Hadoop的流媒体和高性能数据分析能力集成到云计算环境中,提供网络监控和入侵检测。我们的性能评估和实验结果表明,所开发的系统可以处理大量的流数据,具有较高的检测精度和良好的系统性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A streaming-based network monitoring and threat detection system
The unyielding trend of increasing cyber threats has made cyber security paramount in protecting personal and private intellectual property. In order to provide the most highly secured network environment, network traffic monitoring and threat detection systems must handle real-time data from varied and branching places in enterprise networks. Though numerous investigations have yielded real-time threat detection systems, in this paper we addressed the issue of handling the large volumes of network traffic data of enterprise systems, while simultaneously providing real-time monitoring and detection remain unsolved. Particularly, we introduced and evaluated a streaming-based threat detection system that can rapidly analyze highly intensive network traffic data in real-time, utilizing the streaming-based clustering algorithms to detect abnormal network activities. The developed system integrates the streaming and high-performance data analysis capabilities of Flume, Sharp, and Hadoop into a cloud-computing environment to provide network monitoring and intrusion detection. Our performance evaluation and experimental results demonstrate that the developed system can cope with a significant volume streaming data with high detection accuracy and good system performance.
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