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Energy Efficiency and Quality of Data Reconstruction Through Data-Coupled Clustering for Self-Organized Large-Scale WSNs

机译:自组织大型无线传感器网络通过数据耦合聚类的能效和数据重构质量

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Energy efficiency has been a leading issue in Wireless Sensor Networks (WSNs) and has produced a vast amount of research. Although the classic tradeoff has been between the quality of gathered data versus the lifetime of the network, most works gave preference to an increased network lifetime at the expense of the data quality. A common approach for energy efficiency is partitioning the network into clusters with correlated data, where the representative nodes simply transmit or average measurements inside the cluster. In this paper, we explore the joint use of in-network processing techniques and clustering algorithms. This approach seeks both high data quality with a controlled number of transmissions using an aggregation function and an energy efficient network partition, respectively. The aim of this combination is to increase energy efficiency without sacrificing the data quality. We compare the performance of the Second-Order Data-Coupled Clustering (SODCC) and Compressive-Projections Principal Component Analysis (CPPCA) algorithm combination, in terms of both the energy consumption and the quality of the data reconstruction, to other combinations of the state-of-the-art clustering algorithms and in-network processing techniques. Among all the considered cases, the SODCC + CPPCA combination revealed a perfect balance between data quality, energy expenditure, and ease of network management. The main conclusion of this paper is that the design of WSN algorithms must be processing-oriented rather than transmission-oriented, i.e., investing energy on both the clustering and in-network processing algorithms ensures both energy efficiency and data quality.
机译:能源效率一直是无线传感器网络(WSN)的首要问题,并进行了大量研究。尽管经典的折衷方案是在收集的数据质量与网络的生存时间之间进行权衡,但是大多数工作都倾向于以增加网络生存时间为代价,但会牺牲数据质量。提高能源效率的常用方法是将网络分为具有相关数据的群集,其中代表性节点仅在群集内传输或平均测量值。在本文中,我们探讨了网络内处理技术和聚类算法的联合使用。此方法分别使用聚合功能和节能网络分区来寻求具有受控数量传输的高数据质量。这种结合的目的是在不牺牲数据质量的情况下提高能源效率。我们比较了能源消耗和数据重构质量方面的二阶数据耦合聚类(SODCC)和压缩投影主成分分析(CPPCA)算法组合与其他状态组合的性能最先进的群集算法和网络内处理技术。在所有考虑的案例中,SODCC + CPPCA的组合显示出数据质量,能耗和网络管理简便性之间的完美平衡。本文的主要结论是,WSN算法的设计必须面向处理而不是面向传输,即在集群和网络内处理算法上投入大量精力可确保能源效率和数据质量。

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