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Anomaly detection and traffic shaping under self-similar aggregated traffic in optical switched networks

机译:光交换网络中自相似聚合流量下的异常检测和流量整形

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The study in traffic analysis has shown that modern network produces traffic streams that are self-similar over several times scales from microseconds to minutes. Simulations studies have demonstrated that self-similarity leads to a larger queueing delays and higher drop rates than the Markovian short range dependence (SRD) traffic. At the same time, the dynamic expansion of applications on modern network gives rise to a fundamental challenge for network monitoring and security. Therefore, it is critical to reduce the degree of second order scaling for better network performance and detects traffic anomalies efficiently. In this paper, we propose an approach, which can capture the traffic anomalies and decrease the degree of long range dependence at the conjunction of the optical packet switching backbone network. In this method, a traffic shaping technique is proposed and a reference model is generated based on the well-behaving traffic anomaly detection. Further, we apply the compensation bursty parameter for smoothing the deviation error caused by burstiness difference existing in the traffic data sets. The simulation results show that our work can decrease the degree of self-similarity and detect the anomaly-behaving traffic efficiently.
机译:流量分析研究表明,现代网络产生的流量在数微秒到数分钟的范围内都是自相似的。仿真研究表明,与马尔可夫短程相关性(SRD)流量相比,自相似性导致更大的排队延迟和更高的丢包率。同时,现代网络上应用程序的动态扩展给网络监控和安全性带来了根本性挑战。因此,至关重要的是降低二阶缩放的程度,以获得更好的网络性能并有效地检测流量异常。在本文中,我们提出了一种方法,该方法可以在光分组交换骨干网的结合处捕获流量异常并降低远程依赖程度。该方法提出了一种流量整形技术,并基于行为良好的流量异常检测生成了参考模型。此外,我们应用补偿突发参数来平滑由交通数据集中存在的突发性差异引起的偏差误差。仿真结果表明,我们的工作可以降低自相似度,并有效地检测异常行为流量。

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