Optimal data partitioning and forwarding in opportunistic mobile networks

Ning Wang, Jie Wu
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引用次数: 9

Abstract

In opportunistic mobile networks, existing schemes rely on the assumption that data can be entirely transmitted at each contact. However, in an opportunistic mobile network, the transmission probability exponentially decreases as the data size increases. That is, the contact duration in each contact might be insufficient to deliver large data. Therefore, it is reasonable to partition original data into small data chunks and each chunk is forwarded through an opportunistic path. The objective of this paper is to find an optimal data partition strategy where the data delivery ratio is maximized under a given deadline. There is a trade-off in data partitioning. Each small chunk in a path has a higher delivery probability than the original data, and consequently, a shorter delivery latency under the persistent transmission model with re-transmission. However, the destination needs to receive all chunks in multiple paths (a path is a sequence of contacts) to retrieve the data. A delay in any path will lead to a longer delivery latency. We formulate the data partitioning problem and propose solutions in blind flooding. In the blind flooding scenario, we find the optimal data partitioning size. Network coding technique is used to the proposed method to further improve the performance. Extensive experiments on realistic traces show that our scheme achieves a much better performance than those without partitioning.
机会移动网络中的最优数据划分和转发
在机会主义移动网络中,现有方案依赖于每次接触都能完全传输数据的假设。然而,在机会移动网络中,随着数据量的增加,传输概率呈指数级下降。也就是说,每个联系人的持续时间可能不足以交付大数据。因此,将原始数据划分为小数据块,每个数据块通过机会路径转发是合理的。本文的目标是找到在给定的截止日期下数据传输率最大的最优数据分区策略。在数据分区中存在一种权衡。路径上的每个小块都比原始数据具有更高的传输概率,因此在具有重传的持久传输模型下,传输延迟更短。但是,目的地需要接收多个路径(路径是一个联系人序列)中的所有块来检索数据。任何路径上的延迟都会导致更长的交付延迟。提出了盲驱中的数据划分问题,并提出了解决方案。在盲泛滥的情况下,我们找到了最优的数据分区大小。该方法采用了网络编码技术,进一步提高了性能。在真实轨迹上的大量实验表明,我们的方案比不进行分区的方案具有更好的性能。
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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