基于时空相关聚类的无线传感器网络压缩数据采集方法

Junying Chen, Xiao Xu, J. Wan
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引用次数: 1

摘要

为了解决传统数据采集协议能耗高的问题,平衡网络负载,提出了一种基于时空相关的压缩数据采集聚类方法(SCCM-CDG)。首先,我们提出了一个测量邻域节点时空相关性的数学模型。其次,提出了一种基于时空相关的聚类方法,并将其应用于数据采集协议中。集群内的传感器节点利用压缩感知理论向簇头发送少量的线性投影,然后簇头沿着簇头和sink之间的最短平方距离生成树发送样本数据。仿真和实验结果验证了SCCM算法的准确性,表明与现有的基于压缩感知的数据采集方案相比,SCCM- cdg算法可以大幅降低能耗,延长网络寿命,并促进汇处数据恢复的改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressed Data-Gathering Method based on Spatiotemporal Correlation Clustering in Wireless Sensor Networks
To solve the problem of high energy consumption in traditional data-gathering protocols and to balance the network load, a spatiotemporal correlation-based clustering method for compressive data gathering (SCCM-CDG) is proposed. First, we present a mathematical model to measure the spatiotemporal correlation of neighborhood nodes. Second, a spatiotemporal correlation-based clustering method (SCCM) is proposed and then applied to the data-gathering protocol. Sensor nodes within a cluster send a small number of linear projections to cluster heads using compressive sensing theory, and then cluster heads send sample data along the shortest square distance spanning tree among cluster heads and the sink. Results of the simulation and experiment verify the accuracy of the SCCM algorithm, revealing that the SCCM-CDG algorithm can substantially reduce energy consumption, prolong network lifetime, and promote improvements in data recovery at the sink compared with existing compressive sensing-based data-gathering schemes.
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