大型无线局域网中流量需求的可扩展测量驱动建模

M. Karaliopoulos, M. Papadopouli, Elias Raftopoulos, Haipeng Shen
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引用次数: 23

摘要

流量需求模型是数据网络设计和工程的基本输入。在本文中,我们利用来自北卡罗来纳大学(UNC)无线校园网的真实测量数据,在大规模无线基础设施的背景下解决了这一要求。我们的建模工作侧重于以一种与无线网络规模相适应的方式,在空间和时间领域捕捉需求变化。从单个建筑到整个网络,在不同的空间聚集水平上,通过两个不同的为期一周的监测周期,研究了网络流量动态。我们根据无线会话和网络流对流量工作负载进行建模,并找到了几个在时间和空间维度上都可重用的建模元素。与会话和流相关的流量变量的同一组参数分布捕获了两个监视周期中的网络流量需求。更有趣的是,这些相同的分布可以在更精细的空间尺度上描述交通动态,例如单个建筑物或一组建筑物。我们使用我们的模型生成合成流量,并与跟踪数据进行比较。这个比较清楚地说明了模型可伸缩性和可重用性之间的权衡,以及捕获本地规模流量动态的准确性。我们的主要贡献是为大型无线网络中的流量需求建模提供了一种新颖的行为方法,该方法在利用数据轨迹中可用的空间和时间分辨率方面具有高度的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On scalable measurement-driven modeling of traffic demand in large WLANs
Models of traffic demand are fundamental inputs to the design and engineering of data networks. In this paper we address this requirement in the context of large-scale wireless infrastructures using real measurement data from the University of North Carolina (UNC) wireless campus network. Our modeling effort focuses on capturing the demand variation in both the spatial and temporal domain in a way that scales well with the size of the wireless network. The network traffic dynamics are studied over two different week-long monitoring periods at various levels of spatial aggregation, from individual buildings to the whole network. We model traffic workload in terms of wireless sessions and network flows and find several modeling elements that are reusable in both temporal and spatial dimensions. The same set of parametric distributions for the session-and flow-related traffic variables capture the network traffic demand in both monitoring periods. Even more interestingly, these same distributions can characterize traffic dynamics at finer spatial scales, such as a single building or a group of buildings. We use our models to generate synthetic traffic and compare with trace data. The comparison clearly illustrates the trade-off between model scalability and reusability, on the one hand, and accuracy in capturing local-scale traffic dynamics on the other. Our main contribution is a novel behavioral approach for traffic demand modeling in large wireless networks that features high flexibility in the exploitation of the spatial and temporal resolution available in data traces.
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