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A Sub-Clustering Algorithm Based on Spatial Data Correlation for Energy Conservation in Wireless Sensor Networks

机译:无线传感器网络中基于空间数据关联的节能子聚类算法

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Wireless sensor networks (WSNs) have emerged as a promising solution for various applications due to their low cost and easy deployment. Typically, their limited power capability, i.e., battery powered, make WSNs encounter the challenge of extension of network lifetime. Many hierarchical protocols show better ability of energy efficiency in the literature. Besides, data reduction based on the correlation of sensed readings can efficiently reduce the amount of required transmissions. Therefore, we use a sub-clustering procedure based on spatial data correlation to further separate the hierarchical (clustered) architecture of a WSN. The proposed algorithm (2TC-cor) is composed of two procedures: the prediction model construction procedure and the sub-clustering procedure. The energy conservation benefits by the reduced transmissions, which are dependent on the prediction model. Also, the energy can be further conserved because of the representative mechanism of sub-clustering. As presented by simulation results, it shows that 2TC-cor can effectively conserve energy and monitor accurately the environment within an acceptable level.
机译:无线传感器网络(WSN)成本低廉且易于部署,已成为各种应用的有前途的解决方案。通常,它们有限的电源能力(即电池供电)使WSN面临延长网络寿命的挑战。许多分层协议在文献中显示出更高的能效能力。此外,基于感测到的读数的相关性的数据减少可以有效地减少所需的传输量。因此,我们使用基于空间数据相关性的子群集过程来进一步分离WSN的分层(群集)体系结构。所提出的算法(2TC-cor)由两个过程组成:预测模型构建过程和子聚类过程。减少预测的传输量可以降低能耗,具体取决于预测模型。而且,由于子集群的代表性机制,可以进一步节省能量。如仿真结果所示,它表明2TC-cor可以有效地节约能源并在可接受的水平内准确监控环境。

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