Capacity- and energy-aware activation of sensor nodes for area phenomenon reproduction using wireless network transport

Xiaolong Huang, I. Rubin
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Abstract

We consider a sensor network involving sensors placed in specific locations. An area phenomenon is detected and tracked by activated sensors. The area phenomenon is modeled to consist of K spatially distributed point phenomena. The activated sensors collect data samples characterizing the parameters of the involved point phenomena. They compress observed data readings and transport them to a processing center. The center processes the received data to derive estimates of the point phenomena's parameters. Our sensing stochastic process models account for distance-dependent observation noise perturbations as well as noise correlations. At the processing center, sample mean calculations are used to derive the estimates of the underlying area phenomenon's parameters. We develop computationally efficient algorithms to determine the specific set of sensors for activation under capacity and energy resource constraints so that a sufficiently low reproduction distortion level is attained. We derive lower bounds on the realizable levels of the distortion measure. Using illustrative cases, we demonstrate one of our algorithms to yield distortion levels that are very close to the lower bound, while other lower-complexity schemes often yield distortion levels relatively close to the lower bound.
利用无线网络传输进行区域现象再现的传感器节点的容量和能量感知激活
我们考虑一个包含放置在特定位置的传感器的传感器网络。区域现象被激活的传感器检测和跟踪。区域现象由K个空间分布的点现象组成。激活的传感器收集表征所涉及的点现象参数的数据样本。它们压缩观察到的数据读数,并将其传送到处理中心。该中心对接收到的数据进行处理,得出点现象参数的估计。我们的传感随机过程模型考虑了与距离相关的观测噪声扰动以及噪声相关性。在处理中心,使用样本均值计算来得出下伏区域现象参数的估计。我们开发了计算效率高的算法,以确定在容量和能量资源限制下激活的特定传感器集,从而达到足够低的再现失真水平。我们推导了失真测量的可实现水平的下界。使用说明性案例,我们演示了我们的一种算法产生非常接近下界的失真水平,而其他低复杂度方案通常产生相对接近下界的失真水平。
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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