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Study of Stationary Load Increase of Computer-Network Traffic via Dynamic Principal-Component Analysis

机译:动态主成分分析法研究计算机网络流量的固定负载

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Many network monitoring applications and performance analysis tools are based on the study of an aggregate measure of network traffic, for example, number of packets in transit (NPT). The simulation modeling and analysis of this type of performance indicator enables a theoretical investigation of the underlying complex system through different combination of network setups such as routing algorithms, network source loads or network topologies. To detect stationary increase of network source load, we propose a dynamic principal component analysis (PCA) method, first to extract data features and then to detect a stationary load increase. The proposed detection schemes are based on either the major or the minor principal components of network traffic data. To demonstrate the applications of the proposed method, we first applied them to some synthetic data and then to network traffic data simulated from the packet switching network (PSN) model. The proposed detection schemes, based on dynamic PCA, show enhanced performance in detecting an increase of network load for the simulated network traffic data. These results show usefulness of a new feature extraction method based on dynamic PCA that creates additional feature variables for event detection in a univariate time series.
机译:许多网络监视应用程序和性能分析工具都基于对网络流量的总体度量的研究,例如,传输中的数据包数量(NPT)。这种类型的性能指标的仿真建模和分析可以通过网络设置(例如路由算法,网络源负载或网络拓扑)的不同组合对基础复杂系统进行理论研究。为了检测网络源负载的平稳增长,我们提出了一种动态主成分分析(PCA)方法,首先提取数据特征,然后检测静态负载增长。提议的检测方案基于网络流量数据的主要或次要主要成分。为了演示该方法的应用,我们首先将它们应用于一些综合数据,然后应用于从分组交换网络(PSN)模型模拟​​的网络流量数据。所提出的基于动态PCA的检测方案在检测模拟网络流量数据的网络负载增加方面表现出增强的性能。这些结果显示了基于动态PCA的新特征提取方法的实用性,该方法可创建其他特征变量以用于单变量时间序列中的事件检测。

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