巧克力:互联网背景辐射的中断检测

Andreas Guillot, Romain Fontugne, Philipp Winter, P. Mérindol, Alistair King, A. Dainotti, C. Pelsser
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引用次数: 21

摘要

互联网是一个复杂的生态系统,由数千个由独立组织运营的自治系统(as)组成;每个自治系统在自己的网络之外的视野都非常有限。当问题出在网络之外时,这些复杂性和局限性阻碍了网络运营商精确地查明服务退化或中断的原因。在本文中,我们提出了一种利用互联网背景辐射(IBR)检测远程连接丢失的简单而有效的解决方案Chocolatine。IBR是单向的未经请求的Internet流量,通过监视未使用的地址空间很容易观察到。IBR有两个显著的特点:它起源于世界各地,跨越不同的国家,并且是不间断的。我们展示了从自治系统或地理区域观察到的IP地址数量遵循周期性模式。然后,利用季节性ARIMA对IBR数据进行统计建模,预测下一个时间窗口的ip数量。与这些预测的显著偏差表明出现了中断。我们使用由CAIDA操作的UCSD网络望远镜的数据对Chocolatine进行了评估,并记录了一系列故障。我们的实验表明,所提出的方法在真阳性率(90%)和假阳性率(2%)之间实现了很好的权衡,并且在很大程度上优于CAIDA自己的基于ibr的检测方法。此外,与其他方法(即使用BGP监视和主动探测)进行比较,我们观察到,除了许多无法检测到的特定中断外,Chocolatine与它们共享大量常见的中断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chocolatine: Outage Detection for Internet Background Radiation
The Internet is a complex ecosystem composed of thousands of Autonomous Systems (ASs) operated by independent organizations; each AS having a very limited view outside its own network. These complexities and limitations impede network operators to finely pinpoint the causes of service degradation or disruption when the problem lies outside of their network. In this paper, we present Chocolatine, a solution to detect remote connectivity loss using Internet Background Radiation (IBR) through a simple and efficient method. IBR is unidirectional unsolicited Internet traffic, which is easily observed by monitoring unused address space. IBR features two remarkable properties: it is originated worldwide, across diverse ASs, and it is incessant. We show that the number of IP addresses observed from an AS or a geographical area follows a periodic pattern. Then, using Seasonal ARIMA to statistically model IBR data, we predict the number of IPs for the next time window. Significant deviations from these predictions indicate an outage. We evaluated Chocolatine using data from the UCSD Network Telescope, operated by CAIDA, with a set of documented outages. Our experiments show that the proposed methodology achieves a good trade-off between true-positive rate (90%) and falsepositive rate (2%) and largely outperforms CAIDA’s own IBR-based detection method. Furthermore, performing a comparison against other methods, i.e., with BGP monitoring and active probing, we observe that Chocolatine shares a large common set of outages with them in addition to many specific outages that would otherwise go undetected.
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