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An Efficient Prediction-Based Routing in Disruption-Tolerant Networks

机译:容错网络中基于预测的高效路由

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摘要

Routing is one of the most challenging, open problems in disruption-tolerant networks (DTNs) because of the short-lived wireless connectivity environment. To deal with this issue, researchers have investigated routing based on the prediction of future contacts, taking advantage of nodes' mobility history. However, most of the previous work focused on the prediction of whether two nodes would have a contact, without considering the time of the contact. This paper proposes predict and relay (PER), an efficient routing algorithm for DTNs, where nodes determine the probability distribution of future contact times and choose a proper next-hop in order to improve the end-to-end delivery probability. The algorithm is based on two observations: one is that nodes usually move around a set of well-visited landmark points instead of moving randomly; the other is that node mobility behavior is semi-deterministic and could be predicted once there is sufficient mobility history information. Specifically, our approach employs a time-homogeneous semi-Markov process model that describes node mobility as transitions between landmarks. Then, we extend it to handle the scenario where we consider the transition time between two landmarks. A simulation study shows that this approach improves the delivery ratio and also reduces the delivery latency compared to traditional DTN routing schemes.
机译:由于短暂的无线连接环境,路由是容错网络(DTN)中最具挑战性的开放问题之一。为了解决这个问题,研究人员利用节点的移动历史,根据对未来联系的预测来研究路由。但是,以前的大部分工作都集中在预测两个节点是否将具有联系而不预测联系时间的情况上。本文提出了预测和中继(PER),这是DTN的一种有效路由算法,其中节点确定未来联系时间的概率分布并选择适当的下一跳以提高端到端的传递概率。该算法基于两个观察结果:一个是节点通常绕着一组良好访问的界标点移动,而不是随机移动。另一个是节点移动性行为是半确定性的,一旦有足够的移动性历史信息就可以预测到。具体来说,我们的方法采用了时间均匀的半马尔可夫过程模型,该模型将节点的移动性描述为界标之间的过渡。然后,将其扩展为处理考虑两个地标之间的过渡时间的场景。仿真研究表明,与传统的DTN路由方案相比,此方法提高了传递比率,还减少了传递延迟。

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