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Abnormality metrics to detect and protect against network attacks

机译:异常度量来检测和防止网络攻击

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Internet has been growing at an amazing rate and it becomes pervasive in all aspects of our life. On the other hand, the ubiquity of networked computers and their services has significantly increased their vulnerability to virus and worm attacks. To make pervasive systems and their services reliable and secure it becomes highly essential to develop on-line monitoring, analysis, and quantification of the operational state of such systems and services under a wide range of normal and abnormal workload scenarios. We prevent several abnormality metrics that can be used to detect abnormal behaviors and also can be used to quantify the impact of attach on pervasive system sendees. Our online monitoring approach is based on deploying software agents on selected routers, clients and servers to continuously monitor the measurement attributes and compute the abnormality metrics. Further, we use this metrics to quantify the impact of attacks on the individual components and on the system as a whole. This analysis leads to identify the most critical components in the system. We have built a test bed to experiment and evaluate the effectiveness of these metrics to detect several well-known network attacks such as MS SQL slammer worm attack, Denial of Service attack, and email worm spam.
机译:互联网以惊人的速度增长,在我们生命的各个方面变得普遍存在。另一方面,网络计算机和他们的服务的无处不在增加了对病毒和蠕虫攻击的脆弱性。为了使普及系统及其服务可靠和安全,在广泛的正常和异常工作量方案下开发在线监测,分析和量化在线监测,分析和定量这些系统和服务的运行状态。我们防止可用于检测异常行为的若干异常度量,并且还可用于量化附着在普及系统发送方上的影响。我们的在线监控方法是基于在所选路由器,客户端和服务器上部署软件代理,以连续监控测量属性并计算异常度量。此外,我们使用此指标来量化攻击对各个组件的影响以及整个系统。该分析导致识别系统中最关键的组件。我们已经建立了一个测试床来试验并评估了这些指标的有效性,以检测几种着名的网络攻击,如MS SQL Slammer蠕虫攻击,拒绝服务攻击和电子邮件蠕虫垃圾邮件。

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