利用revolvernet提高应急响应网络的可靠性

P. Kolios, C. Laoudias, C. Panayiotou
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引用次数: 2

摘要

RevolverNet在无线自组织网络上运行,节点按占空比通信。当不处于睡眠状态时,节点信标它们自己的数据并监听来自相邻节点的数据。重要的是,这种操作模式正日益成为各种通信设置(包括应急响应网络)中的一个突出特征。RevolverNet旨在利用这些信标机制来收集网络情报,并以纯粹分布式和本地的方式实现数据传播。我们研究了RevolverNet对ern有吸引力的两个有利特性,即拓扑映射和节点定位,它们高度适用于ern。我们展示了如何以有效的方式从底层特设网络中提取这两个特征,以及如何随后使用它们在网络中传播信息。我们介绍了RevolverNet性能的初步结果,并讨论了未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the reliability of emergency response networks using revolvernet
RevolverNet, operates over wireless ad-hoc networks where nodes communicate in duty cycles. When not at sleep, nodes beacon their own data and listen for data coming from neighboring nodes. Importantly, this mode of operation is increasingly becoming a prominent feature in a variety of communication setups, including emergency response networks (ERNs). RevolverNet is purposefully designed to take advantage of these beaconing mechanisms to gather network intelligence and achieve data dissemination in a purely distributed and local fashion. We examine two favourable features of RevolverNet that are attractive to ERNs, namely topological mapping and node localization that are highly applicable to ERNs. We show how these two features can be extracted from the underlying adhoc network in an efficient manner and how they can subsequently be used to disseminate information in the network. We present preliminary results on the performance of RevolverNet and discuss future work.
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