Mind the Gap: Autonomous Detection of Partitioned MANET Systems using Opportunistic Aggregation

S. Bouget, Yérom-David Bromberg, H. Mercier, E. Rivière, François Taïani
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引用次数: 4

Abstract

Mobile Ad-hoc Networks (MANETs) use limited-range wireless communications and are thus exposed to partitions when nodes fail or move out of reach of each other. Detecting partitions in MANETs is unfortunately a nontrivial task due to their inherently decentralized design and limited resources such as power or bandwidth. In this paper, we propose a novel and fully decentralized approach to detect partitions (and other large membership changes) in MANETs that is both accurate and resource efficient. We monitor the current composition of a MANET using the lightweight aggregation of compact membership-encoding filters. Changes in these filters allow us to infer the likelihood of a partition with a quantifiable level of confidence. We first present an analysis of our approach, and show that it can detect close to 100% of partitions under realistic settings, while at the same time being robust to false positives due to churn or dropped packets. We perform a series of simulations that compare against alternative approaches and confirm our theoretical results, including above 90% accurate detection even under a 40% message loss rate.
注意间隙:使用机会聚合的分区MANET系统的自主检测
移动自组织网络(manet)使用有限范围的无线通信,因此当节点发生故障或移动到彼此无法到达的地方时,就暴露在分区中。不幸的是,由于其固有的分散设计和有限的资源(如功率或带宽),检测manet中的分区是一项不平凡的任务。在本文中,我们提出了一种新颖且完全分散的方法来检测manet中的分区(以及其他大型成员变化),该方法既准确又资源高效。我们使用紧凑成员编码过滤器的轻量级聚合来监控MANET的当前组成。这些过滤器的变化使我们能够以可量化的置信度推断出分区的可能性。我们首先对我们的方法进行了分析,并表明它可以在实际设置下检测到接近100%的分区,同时对由于丢失或丢失数据包而导致的误报具有鲁棒性。我们进行了一系列的模拟,与其他方法进行比较,并证实了我们的理论结果,包括在40%的消息损失率下仍有90%以上的准确率检测。
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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