Properties of Message Delivery Path in Opportunistic Networks

Q. Cai, J. Niu
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引用次数: 2

Abstract

One of the main challenges in opportunistic networks is how to deliver messages effectively. Mobile nodes have to rely on encounter opportunities to exchange data due to no complete end-to-end path existing in such networks. In this paper, based on in-depth analysis of encounter occurrence process and contact frequency, we find that both of them exhibit unique power-law distributions. The great majority of contacts occurred in short period of time shows that mobile nodes cluster into communities during moving, which indicates the spatial dependency existing among them. The fact that most node pairs only encountered a few times implies that the network connectivity greatly depends on those rare contacts. Using Time Evolving Graph (TEG) theory we analyze the Minimum Delay Path (MDP) for each node pair and find that although there are large number of nodes in networks, the average length of MDP is relative small, which indicates that communities are inherently organized into a hierarchy structure as human society is, and some rare encounters have a significant influence on the average length of MDP as well as the message delivery delay. Our results suggest that decentralized community detection algorithms will achieve optimal message delivery performance with the help of node encounter history information about inter-community.
机会网络中消息传递路径的特性
机会主义网络的主要挑战之一是如何有效地传递信息。由于此类网络中不存在完整的端到端路径,移动节点必须依靠偶遇机会来交换数据。本文在深入分析相遇发生过程和接触频率的基础上,发现两者都表现出独特的幂律分布。绝大多数接触发生在短时间内,表明移动节点在移动过程中聚集成群落,表明它们之间存在空间依赖性。大多数节点对只遇到几次的事实意味着网络连接在很大程度上依赖于这些罕见的接触。利用时间演化图(TEG)理论对各节点对的最小延迟路径(MDP)进行了分析,发现虽然网络中节点数量众多,但最小延迟路径的平均长度相对较小,这表明社区与人类社会一样具有固有的层次结构,并且一些罕见的相遇对最小延迟路径的平均长度和消息传递延迟有显著影响。我们的研究结果表明,去中心化社区检测算法可以借助节点间社区的相遇历史信息实现最优的消息传递性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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