Routing protocol based on social characteristics for opportunistic networks

Q4 Computer Science
Gang CHENG , Mei SONG , Yong ZHANG , Yi-hai XING , Xu-yan BAO
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引用次数: 5

Abstract

Opportunistic networks are derived from delay tolerant networks, where mobile nodes have no end-to-end connections. Nodes are represented by people, which means that opportunistic networks can be regarded as social networks. Human mobility plays an important role in affecting the performance of forwarding protocols in social networks, furthermore, the trajectory of people's movements are driven by social characteristics. However, current routing protocols rely on simple mobility models, and rarely consider social characteristics. Considering two heterogeneous network models, an social opportunistic networks routing (SONR) was proposed which brings an adapted discrete Markov chain into nodes' mobility model and calculates the transition probability between successive status. Comparison was made between Spray, Wait and Epidemic protocol. Simulation show that SONR can improve performance on delivery ratio, delivery latency and network overhead, meanwhile. SONR approaches the performance of Epidemic routing.

机会网络中基于社会特征的路由协议
机会网络源于延迟容忍网络,其中移动节点没有端到端连接。节点由人来表示,这意味着机会主义网络可以看作是社会网络。在社交网络中,人的移动性对转发协议的性能有重要影响,而且人的移动轨迹受社会特征的驱动。然而,目前的路由协议依赖于简单的移动模型,很少考虑社会特征。针对两种异构网络模型,提出了一种社会机会网络路由(SONR)算法,该算法将自适应离散马尔可夫链引入节点迁移模型,计算节点连续状态之间的转移概率。对喷雾、等待和流行方案进行了比较。仿真结果表明,SONR在传输比、传输延迟和网络开销等方面均有显著提高。SONR接近流行病路由的性能。
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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CiteScore
0.50
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1878
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