容延迟网络中数据流量的自相似性

Somreeta Pramanik, R. Datta, Puspal Chatterjee
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引用次数: 7

摘要

近年来,从星际网络(IPN)到车载自组织网络(vanet)等各种类型的容忍延迟网络(DTNs)不断受到人们的关注。现有的DTNs协议主要是在假设数据流量是恒定比特率(CBR)或泊松速率(Poisson)的情况下设计和分析的。已经观察到,这些模型无法捕捉到当今交通的到达间行为,这可能是突发的性质。当今通信网络的流量特征在统计上是自相似的,即在许多时间尺度上存在突发性和相关性,也称为长距离依赖(LRD)。本文分析了容延迟网络中节点间的流量特性。自相似流量是通过在DTN的源模块中实现流量模型产生的。它基于聚合的on /OFF源模型。通过数学分析,阐明了DTN通信量自相似特性产生的原因。通过对交通数据的仿真和统计分析,研究了车辆容忍延迟网络中各节点交通的自相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-similarity of data traffic in a Delay Tolerant Network
Delay Tolerant Networks (DTNs) ranging from Inter-Planetary Networks (IPN) to Vehicular Ad Hoc Networks (VANETs) are receiving continuous attention in recent years. The existing protocols for DTNs have been primarily designed and analyzed under the assumption that data traffic is either Constant Bit Rate (CBR) or Poisson. It has been observed that such models are incapable of capturing the inter-arrival behavior of the present day traffic which may be bursty in nature. The traffic characteristics in todays communication networks are statistically self-similar in nature, i.e., burstiness and correlation exists over many time scales, also referred to as Long Range Dependency (LRD). In this paper we analyze the traffic characteristics in the nodes of a delay tolerant network. Self-similar traffic is generated by implementing a traffic model in the source module of DTN. It is based on the model of aggregated ON/OFF sources. A mathematical analysis is provided to elucidate the cause of self similar nature of traffic in DTN. Through simulations and statistical analysis of the traffic data, we study the degree of self-similarity of traffic in the nodes of a vehicular delay tolerant network.
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