On the bounds of separability in sensor networks

B. Krishnan
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引用次数: 1

Abstract

A pair of target locations are separable if sensor observations can distinguish between the following choices: no targets are present, one target is present at either of the locations or a target is present at each location. The sensors of interest in this paper are binary proximity sensors, whose binary outputs are functions of the distance between the sensor and target. Sensors are deployed randomly according to a Poisson distribution. The probability that two target locations at a distance of r between them are separable is derived. This is extended to derive the probability of having at least Z among M uniformly distributed target locations to be non-separable from the origin. The bounds on this probability are expressed as a function of the sensor density λ.
传感器网络的可分性边界
如果传感器观察能够区分以下选择,则一对目标位置是可分离的:没有目标存在,一个目标存在于任何一个位置,或者每个位置都有一个目标。本文感兴趣的传感器是二进制接近传感器,其二进制输出是传感器与目标之间距离的函数。传感器按泊松分布随机部署。导出了距离为r的两个目标位置可分离的概率。将此推广到在M个均匀分布的目标位置中至少有Z个与原点不可分离的概率。该概率的界限表示为传感器密度λ的函数。
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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