【24h】

On Detection of Anomalous Routing Dynamics in BGP

机译:BGP中异常路由动态检测

获取原文
获取原文并翻译 | 示例

摘要

BGP, the de facto inter-domain routing protocol, is the core component of current Internet infrastructure. BGP traffic deserves thorough exploration, since abnormal BGP routing dynamics could impair global Internet connectivity and stability. In this paper, two methods, signature-based detection and statistics-based detection, are designed and implemented to detect BGP anomalous routing dynamics in BGP UPDATEs. Signature-based detection utilizes a set of fixed patterns to search and identify routing anomalies. For the statistics-based detection, we devise five measures to model BGP UPDATEs traffic. In the training phase, the detector is trained to learn the expected behaviors of BGP from the historical long-term BGP UPDATEs dataset. It then examines the test dataset to detect "anomalies" in the testing phase. An anomaly is flagged when the tested behavior significantly differs from the expected behaviors. We have applied these two approaches to examine the BGP data collected by RIPE-NCC servers for a number of IP prefixes. Through manual analysis, we specify possible causes of some detected anomalies. Finally, comparing the two approaches, we highlight the advantages and limitations of each. While our evaluation is still preliminary, we have demonstrated that, by combining both signature-based and statistics-based anomaly detection approaches, our system can effectively and accurately identify certain BGP events that are worthy of further investigation.
机译:事实上的域间路由协议BGP是当前Internet基础结构的核心组件。 BGP流量值得深入研究,因为异常的BGP路由动态可能会损害全球Internet连接和稳定性。本文设计并实现了两种方法:基于签名的检测和基于统计的检测,以检测BGP UPDATE中的BGP异常路由动态。基于签名的检测利用一组固定模式来搜索和识别路由异常。对于基于统计的检测,我们设计了五种方法来对BGP UPDATE流量进行建模。在训练阶段,对检测器进行训练以从历史长期BGP UPDATEs数据集中学习BGP的预期行为。然后,它检查测试数据集以在测试阶段检测“异常”。当测试的行为与预期的行为明显不同时,将标记为异常。我们已经应用了这两种方法来检查由RIPE-NCC服务器收集的BGP数据中的许多IP前缀。通过手动分析,我们指定了某些检测到的异常的可能原因。最后,比较这两种方法,我们强调每种方法的优点和局限性。虽然我们的评估仍是初步的,但我们已经证明,通过结合基于签名和基于统计的异常检测方法,我们的系统可以有效,准确地识别某些值得进一步研究的BGP事件。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号