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SPRINT: Social prediction-based opportunistic routing

机译:SPRINT:基于社交预测的机会传递

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Opportunistic networks are mobile networks that rely on the store-carry-and-forward paradigm, using contacts between nodes to opportunistically transfer data. For this reason, traditional routing mechanisms are no longer suitable. To increase the probability of successfull message delivery, we propose SPRINT, an opportunistic routing algorithm that introduces an additional routing criterion: online social information about nodes. Furthermore, previous results show that, for particular environments, contacts between devices in opportunistic networks are highly predictable. When users follow rare events-based mobility patterns, we show that human mobility can be approximated as a Poisson distribution. Based on this result, we add an additional prediction component into our routing algorithm. Our solution delivers better results compared to traditional social-based routing approaches, for different real-world and synthetic mobility scenarios.
机译:机会网络是依赖于存储携带和转发范式的移动网络,它使用节点之间的联系来机会性地传输数据。因此,传统的路由机制不再适用。为了增加成功传递消息的可能性,我们提出了一种机会路由算法SPRINT,它引入了附加的路由标准:有关节点的在线社交信息。此外,先前的结果表明,对于特定的环境,机会网络中设备之间的联系是高度可预测的。当用户遵循基于稀有事件的移动性模式时,我们表明人类的移动性可以近似为泊松分布。基于此结果,我们在路由算法中添加了一个额外的预测组件。与传统的基于社交的路由​​方法相比,针对不同的现实世界和综合移动场景,我们的解决方案可提供更好的结果。

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