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Distributed localization and clustering using data correlation and the Occam's razor principle

机译:使用数据相关和偶尔的剃刀原则分布定位和聚类

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摘要

We present a distributed algorithm for computing a combined solution to three problems in sensor networks: localization, clustering, and sensor suspension. Assuming that initially only a rough approximation of the sensor positions is known, we show how one can use sensor measurements to refine the set of possible sensor locations, to group the sensors into clusters with linearly correlated measurements, and to decide which sensors may suspend transmission without jeopardizing the consistency of the collected data. Our algorithm applies the “Occam's razor principle” by computing a “simplest” explanation for the data gathered from the network. We also present centralized algorithms, as well as efficient heuristics.
机译:我们介绍了一种用于计算传感器网络中的三个问题的分布式算法:本地化,聚类和传感器悬架。 假设最初只知道传感器位置的粗略近似,我们展示了如何使用传感器测量来改进可能的传感器位置的集合,以将传感器分组具有线性相关的测量,并确定哪些传感器可以暂停传输 不危及收集数据的一致性。 我们的算法适用于“ occam的剃刀原则” 通过计算a“最简单的” 从网络收集的数据的说明。 我们还提出了集中算法,以及高效的启发式。

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