Self-similarity Modeling Research on Information Gathering Service for Power Utilization of Smart Grid

Shidong Chen, Xiangqun Chen, Junhua Hu, Jun Lu, Zesheng Hu
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引用次数: 0

Abstract

Given the self-similarity characteristic of the communication traffic-flow in the current information gathering service traffic in power utilization network, a self-similarity modeling method is proposed to quantify the feature analysis of the communication flow for the power information gathering service. Firstly, the flow's characteristic and related course of the information gathering service traffic is analyzed, and a self-similarity model is built by means of combining the multiple ON/OFF flows. Secondly, the Hurst coefficient of the service simulation traffic is estimated using Variance-Time method to quantify the flow's self-similarity with the estimation results of Hurst coefficient. Finally, it discusses the influence of Hurst coefficient is discussed according to the two factors including the acquisition accuracy and the gathering periodic. Experimental results illustrate that the proposed method is effective to model the self-similarity of the information gathering service for the power utilization in Smart Grid.
智能电网用电信息采集服务的自相似建模研究
针对当前电力利用网络信息采集业务通信流的自相似特性,提出了一种自相似建模方法来量化电力信息采集业务通信流的特征分析。首先,分析了信息采集服务流量的流特征和相关过程,并结合多个开/关流建立了自相似模型;其次,利用方差-时间法估计业务模拟流量的Hurst系数,用Hurst系数估计结果量化业务模拟流量的自相似度;最后,从采集精度和采集周期两个方面讨论了赫斯特系数的影响。实验结果表明,该方法能够有效地建立智能电网用电信息采集服务的自相似度模型。
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