间歇连接Ad Hoc网络的定位

Wing Ho A. Yuen, H. Schulzrinne
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引用次数: 0

摘要

我们考虑间歇性连接网络的定位。传统的定位方法依赖于接入点(AP)等网络基础设施作为参考节点或锚点,并且在基础设施稀疏时不能很好地工作。我们提出了一种新的定位方案,其中移动节点充当彼此的锚点。每个节点维护一个锚表,存储其与ap和移动节点的相遇历史。当两个节点相遇时,它们相互分享相遇历史,并共同估计当前位置,形成一个新的锚点。这极大地增加了移动节点的锚点数量,并减少了由用户应用程序触发位置估计时的定位错误。锚点的形成和位置估计都是一个最大似然(ML)估计问题,通过利用节点的相遇历史和移动轮廓来约束节点的位置。给出了数值例子来说明ML估计器的性质。仿真结果表明,在随机行走移动模型下,定位误差与锚表大小无关。因此,它足以存储最新的锚,这简化了实现并有利于隐私。更重要的是,定位误差随着节点密度的增加而减小,当节点密度足够高时,定位误差接近移动节点的传输范围
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization for Intermittently Connected Ad Hoc Networks
We consider localization for intermittently connected networks. Traditional localization approaches rely on network infrastructure such as access points (AP) as reference nodes or anchors, and do not work well when infrastructure is sparse. We propose a new class of localization scheme, where mobile nodes act as anchors for each other. Each node maintains an anchor table, storing its encounter history with APs and mobile nodes. When two nodes meet, they share their encounter history with each other, and jointly estimate the current location to form a new anchor. This dramatically increases the number of anchors for a mobile node, and reduces the localization error when position estimation is triggered by a user application. Both anchor formation and position estimation are formulated as a maximum likelihood (ML) estimation problem, by exploiting constraints of node location based on encounter history and mobility profile of nodes. Numerical examples are provided to illustrate properties of the ML estimator. We performed simulations and showed that localization error is independent of the anchor table size under a random walk mobility model. Thus, it suffices to store the most recent anchor, which simplifies implementation and is conducive to privacy. More importantly, localization error decreases as node density increases, and approaches the transmission range of mobile nodes when node density is sufficiently high
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