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Enhancing network traffic prediction and anomaly detection via statistical network traffic separation and combination strategies

机译:通过统计网络流量分离和组合策略来增强网络流量预测和异常检测

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摘要

In this paper, we propose, study and analyze a new network traffic prediction methodology, based on the 'frequency domain' traffic analysis and filtering, with the objective of enhancing the network anomaly detection capabilities. Based on this approach, the traffic can be effectively separated into a baseline component, that includes most of the low frequency traffic and presents low burstiness, and the short-term traffic that includes the most dynamic part. The baseline traffic is a mean non-stationary periodic time series, and the Extended Resource-Allocating Network (ERAN) methodology is used for its accurate prediction. The short-term traffic is shown to be a time-dependent series, and the Autoregressive Moving Average (ARMA) model is proposed to be used for the accurate prediction of this component. Furthermore, it is demonstrated that the proposed enhanced traffic prediction strategy can be combined with the use of dynamic thresholds and adaptive anomaly violation conditions, in order to improve the network anomaly detection effectiveness.
机译:在本文中,我们提出,研究和分析一种基于“频域”流量分析和过滤的新的网络流量预测方法,目的是增强网络异常检测能力。基于此方法,可以将流量有效地分为基线部分,该基线部分包括大部分低频流量并呈现出较低的突发性,而短期流量则包括最动态的部分。基线流量是一个平均的非平稳周期性时间序列,并且使用扩展资源分配网络(ERAN)方法进行了准确的预测。短期流量显示为时间依赖性序列,建议使用自回归移动平均(ARMA)模型对该组件进行准确预测。此外,证明了所提出的增强的流量预测策略可以与动态阈值和自适应异常违反条件的使用相结合,以提高网络异常检测的有效性。

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