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Approximate Conditional Distributions of Distances between Nodes in a Two-Dimensional Sensor Network

机译:二维传感器网络中节点之间距离的近似条件分布

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When we represent a network of sensors in Euclidean space by a graph, there are two distances between any two nodes that we may consider. One of them is the Euclidean distance. The other is the distance between the two nodes in the graph, defined to be the number of edges on a shortest path between them. In this paper, we consider a network of sensors placed uniformly at random in a two-dimensional region and study two conditional distributions related to these distances. The first is the probability distribution of distances in the graph, conditioned on Euclidean distances; the other is the probability density function associated with Euclidean distances, conditioned on distances in the graph. We study these distributions both analytically (when feasible) and by means of simulations. To the best of our knowledge, our results constitute the first of their kind and open up the possibility of discovering improved solutions to certain sensor-network problems, as for example sensor localization.
机译:当我们用图形表示欧几里德空间中的传感器网络时,我们可以考虑的任意两个节点之间都有两个距离。其中之一是欧几里得距离。另一个是图中两个节点之间的距离,定义为它们之间最短路径上的边数。在本文中,我们考虑了均匀分布在二维区域中的传感器网络,并研究了与这些距离有关的两个条件分布。首先是图中距离的概率分布,以欧几里得距离为条件;另一个是与欧几里得距离相关的概率密度函数,以图表中的距离为条件。我们在分析上(可行时)和通过仿真研究了这些分布。据我们所知,我们的结果是同类研究中的首创,并为发现某些传感器网络问题(例如传感器定位)的改进解决方案提供了可能性。

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