自适应数据中心集群与传感器网络的节能物联网应用

Sanat Sarangi, S. Pappula
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引用次数: 3

摘要

无线传感器网络(WSN)通常涉及在一个区域内部署多个节点来测量环境参数。无线传感器网络正被包裹在物联网领域中,这大大增加了它们的部署规模。部署传感器网络的最终目标是获得有关一个区域的有价值的数据,而不考虑用于测量的物理配置。我们提出了一种用于传感器网络的自适应数据中心聚类算法(ADCS),这是一种分层算法,其中用户特定的数据需求被考虑到聚类决策中。具体来说,参数变化的相似性被用作优化的标准。我们已经在印度东北部部署了一个基于eko的传感器网络来测量环境参数,作为精准农业应用的一部分。来自该网络的数据用于开发模型,以严格比较ADCS的三种变体:ADCS- db、ADCS- km和ADCS- ag的性能,并为部署规划提供有用的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Data-Centric Clustering with Sensor Networks for Energy Efficient IoT Applications
A wireless sensor network (WSN) typically involves deploying multiple nodes in an area to measure environmental parameters. WSNs are getting enveloped within the realm of IoT which significantly increases their scale of deployment. The end-objective of deploying a sensor network is to get valuable data about a region irrespective of the physical configuration used for measurement. We propose an Adaptive Data-centric Clustering algorithm for Sensor networks (ADCS), a hierarchical algorithm where user-specific data requirements are factored into the clustering decisions. Specifically, similarity in parameter variations are used as a criteria for optimization. We have deployed an eKo-based sensor network in north-eastern India to measure environmental parameters as part of a precision agriculture application. Data from this network is used to develop models to rigorously compare the performance of three variants of ADCS: ADCS-DB, ADCS-KM and ADCS-AG and arrive at useful recommendations for deployment planning.
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