An Adaptive Sampling Technique for Massive Data Collection in Distributed Sensor Networks

Ahmad Karaki, A. Nasser, C. A. Jaoude, Hassan Harb
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引用次数: 7

Abstract

Wireless sensor networks are becoming very popular nowadays. Sensors in such networks are used to gather data periodically about a given zone area and send the collected data to the sink. However, such networks face several challenges especially the limited energy source and the data management. Hence, data sampling approach is becoming one of the essential techniques that saves he sensor energies and extend the network lifetime. Adaptive algorithms are created to allow each sensor to adapt its sampling rate to the application under surveillance, which leads to reduced data collection thus, reducing energy consumption. In this paper, we propose a new adaptive sampling technique that is dedicated to periodic sensor network applications. Our technique consists of two stages: aggregation and adapting stages. The first stage is applied at sensor level and aims to reduce the amount of data collected by the sensor. The second stage is applied at an intermediate level node called cluster-head (CH). The CH receives data periodically from the sensors and computes the new sampling rate for each sensor based on the spatio-temporal correlation between the sensors. Our technique is evaluated based on real sensor data collected in the Intel lab. The obtained results show the effectiveness of our technique in terms reducing the energy consumption while ensuring a high level of data accuracy and coverage network.
分布式传感器网络中海量数据采集的自适应采样技术
如今,无线传感器网络正变得非常流行。这种网络中的传感器用于周期性地收集关于给定区域的数据,并将收集到的数据发送到接收器。然而,这种网络面临着一些挑战,特别是有限的能源和数据管理。因此,数据采样方法成为节省传感器能量、延长网络寿命的关键技术之一。自适应算法允许每个传感器调整其采样率以适应监控下的应用,从而减少数据收集,从而降低能耗。在本文中,我们提出了一种新的自适应采样技术,用于周期性传感器网络的应用。我们的技术包括两个阶段:聚合阶段和适应阶段。第一阶段应用于传感器层面,旨在减少传感器收集的数据量。第二阶段应用于称为簇头(CH)的中间级别节点。CH周期性地接收来自传感器的数据,并根据传感器之间的时空相关性计算每个传感器的新采样率。我们的技术是基于在英特尔实验室收集的真实传感器数据进行评估的。结果表明,该技术在保证高水平数据精度和网络覆盖的同时,在降低能耗方面是有效的。
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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