基于无线传感器网络的交通污染数据双尺度时间采样策略

Lamling Venus Shum, S. Hailes, Manik Gupta, E. Bodanese, P. Rajalakshmi, U. Desai
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引用次数: 1

摘要

交通污染引起的一氧化碳(CO)是高度动态和非线性的。在一项试点研究中,我们从印度海德拉巴的一条住宅道路和一条繁忙的高速公路上收集了一些细粒度的1Hz CO污染数据,为部署更大规模、更长期的无线传感器监测系统做准备。由于传感器节点由电池供电,因此节能是一个重要问题。研究了采集数据的特点,设计了一种自适应采样算法——双尺度时间采样器,该算法可以根据实时采集的统计数据调整采样频率。该设计结合了实际工程考虑,包括最大限度地减少电子噪声,传感器预热时间和数据特性。结果表明,与环境监测中常用的突发采样和eSENSE采样策略相比,Bi-Scale采样器在节能和统计偏差比方面达到了更高的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bi-scale temporal sampling strategy for traffic-induced pollution data with Wireless Sensor Networks
Carbon Monoxide (CO) induced by traffic pollution is highly dynamic and non-linear. In a pilot research, we collected some fine-grained 1Hz CO pollution data from a residential road and a busy motorway in Hyderabad, India, in preparation of the deployment of a larger scale, longer term wireless sensor monitoring system. Power conservation is an important issue as the sensor nodes are battery operated. We studied the characteristics of the collected data and designed an adaptive sampling algorithm, Bi-Scale temporal sampler, which adapts the sampling frequency to the statistics collected in real time. This design has incorporated practical engineering considerations including minimising electronic noise, sensor warm-up time and data characteristics. Results show that Bi-Scale sampler achieves better energy saving and statistical deviation ratio for our requirements than burst sampling and eSENSE sampling strategies, which are techniques popularly used in environmental monitoring applications.
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