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ASample: Adaptive Spatial Sampling in Wireless Sensor Networks

机译:样本:无线传感器网络中的自适应空间采样

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摘要

A prominent application of Wireless Sensor Networks is the monitoring of physical phenomena. The value of the monitored attributes naturally depends on the accuracy of the spatial sampling achieved by the deployed sensors. The monitored phenomena often tend to have unknown spatial distributions at pre-deployment stage, which also change over time. This can detrimentally affect the overall achievable accuracy of monitoring. Consequently, reaching an optimal (accuracy driven) static sensor node deployment is generally not possible, resulting in either under- or over-sampling of signals in space. Our goal is to provide for adaptive spatial sampling. The key challenges consist in identifying the regions of over- or under-sampling and in suggesting the appropriate countermeasures. In this paper, we propose a Voronoi based adaptive spatial sampling (ASample) solution. Our approach removes unnecessary samples from regions of over-sampling and generates additional new sampling locations in the under-sampling regions to fulfill specified accuracy requirements. Simulation results show that ASample significantly and efficiently reduces the mean square error of the achieved measurement accuracy.
机译:无线传感器网络的一个突出应用是对物理现象的监视。监视属性的值自然取决于部署的传感器实现的空间采样的准确性。在部署前阶段,受监视的现象通常倾向于具有未知的空间分布,并且该空间分布也会随着时间而变化。这会不利地影响监控的总体可达到的准确性。因此,通常不可能达到最佳(精度驱动)的静态传感器节点部署,从而导致空间信号的过采样或过采样。我们的目标是提供自适应空间采样。主要挑战包括确定过度采样或欠采样的区域,并提出适当的对策。在本文中,我们提出了一种基于Voronoi的自适应空间采样(ASample)解决方案。我们的方法从过采样区域中删除不必要的样本,并在欠采样区域中生成其他新的采样位置,以满足指定的精度要求。仿真结果表明,ASample显着有效地降低了所获得测量精度的均方误差。

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