在线视频观看双向流量的基本特征及到达曲线表征

Yuehong Gao, Xiaoqi Wang, Jiamo Jiang, Yuming Jiang, Juan Deng
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引用次数: 1

摘要

为了更好地保证不同类型的流量对服务质量的不同要求,需要对每种流量类型的特征进行研究和建模。本文提出了一种基于测量的交通数据采集与处理方法。在交通建模中,采用累积到达过程的概念。特别地,网络微积分中的到达曲线模型被用于流量表征。收集并分析了四种类型的交通数据作为实例。详细讨论了三种分辨率下在线视频观看应用的结果。作为研究的一个新颖方面,考虑了应用程序的双向流量,即双向流量。对于基本的流量特征,分析了流量速率、报文长度和报文间隔的概率密度函数。为了描述交通,推导并讨论了相应的到达曲线。本文所采用的方法也可以应用于其他交通案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Basic Characteristics and Arrival Curve Characterization for Two-way Traffic of Online Video Watching
In order to better guarantee different quality of service requirements for different types of traffic, characteristics of each traffic type should be studied and modeled. In this paper, a measurement-based study is reported, which includes traffic data collection and processing. For traffic modeling, the concept of cumulative arrival process is adopted. In particular, the arrival curve model in network calculus is used for traffic characterization. Four types of traffic data are collected and analyzed as examples. The results for an online video watching application under three resolutions are discussed in detail. As a novel aspect of the study, the traffic of the application on both directions, i.e., the two-way traffic, is considered. For basic traffic characteristics, the traffic rates and the probability density functions of packet length and packet interval are analyzed. To characterize the traffic, the corresponding arrival curves are derived and discussed. The method adopted in this paper may also be applied to other traffic cases.
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