Island Hopping: Efficient Mobility-Assisted Forwarding in Partitioned Networks

Natasa Sarafijanovic-Djukic, M. Piórkowski, M. Grossglauser
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引用次数: 149

Abstract

Mobile wireless ad hoc and sensor networks can be permanently partitioned in many interesting scenarios. This implies that instantaneous end-to-end routes do not exist. Nevertheless, when nodes are mobile, it is possible to forward messages to their destinations through mobility. We observe that in many practical settings, spatial node distributions are very heterogeneous and possess concentration points of high node density. The locations of these concentration points and the flow of nodes between them tend to be stable over time. This motivates a novel mobility model, where nodes move randomly between stable islands of connectivity, where they are likely to encounter other nodes, while connectivity is very limited outside these islands. Our goal is to exploit such a stable topology of concentration points by developing algorithms that allow nodes to collaborate to discover this topology and to use it for efficient mobility forwarding. We achieve this without any external signals to nodes, such as geographic positions or fixed beacons; instead, we rely only on the evolution of the set of neighbors of each node. We propose an algorithm for this collaborative graph discovery problem and show that the inferred topology can greatly improve the efficiency of mobility forwarding. Using both synthetic and data-driven mobility models we show through simulations that our approach achieves end-to-end delays comparable to those of epidemic approaches, while requiring a significantly lower transmission overhead
岛跳:分区网络中高效移动辅助转发
移动无线自组织网络和传感器网络可以在许多有趣的场景中进行永久分区。这意味着瞬时端到端路由不存在。然而,当节点是移动的时,可以通过移动性将消息转发到它们的目的地。我们观察到,在许多实际设置中,空间节点分布非常异构,并且具有高节点密度的集中点。随着时间的推移,这些集中点的位置和它们之间的节点流量趋于稳定。这激发了一种新的移动性模型,其中节点在稳定的连接岛屿之间随机移动,在那里它们可能会遇到其他节点,而在这些岛屿之外的连接非常有限。我们的目标是通过开发允许节点协作发现这种拓扑并将其用于高效移动转发的算法来利用这种稳定的集中点拓扑。我们在没有任何外部信号的情况下实现这一目标,例如地理位置或固定信标;相反,我们只依赖于每个节点的邻居集的演化。我们提出了一种协作图发现问题的算法,并证明该算法可以极大地提高移动性转发的效率。使用合成和数据驱动的移动模型,我们通过模拟表明,我们的方法实现了与流行病方法相当的端到端延迟,同时需要显着降低传输开销
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