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首页> 外文期刊>Wireless Communications, IEEE Transactions on >Scalable Data-Coupled Clustering for Large Scale WSN
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Scalable Data-Coupled Clustering for Large Scale WSN

机译:大规模WSN的可伸缩数据耦合群集

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摘要

Self-organizing algorithms (SOAs) for wireless sensor networks (WSNs) usually seek to increase the lifetime, to minimize unnecessary transmissions or to maximize the transport capacity. The goal left out in the design of this type of algorithms is the capability of the WSN to ensure an accurate reconstruction of the sensed field while maintaining the self-organization. In this work, we formulate a general framework where the data from the resulting clusters ensures the well-posedness of the signal processing problem in the cluster. We develop the second-order data-coupled clustering (SODCC) algorithm and the distributed compressive-projections principal component analysis (D-CPPCA) algorithm, that use second-order statistics. The condition to form a cluster is that D-CPCCA does not fail to resolve the Principal Components in any given cluster. We show that SODCC is scalable and has similar or better message complexity than other well-known SOAs. We validate these results with extensive computer simulations using an actual LS-WSN. We also show that the performance of SODCC is, comparative to other state-of-the-art SOAs, better at any compression rate and needs no prior adjustment of any parameter. Finally, we show that SODCC compares well to other energy efficient clustering algorithms in terms of energy consumption while excelling in data reconstruction Average SNR.
机译:无线传感器网络(WSN)的自组织算法(SOA)通常试图延长使用寿命,以最小化不必要的传输或最大化传输容量。设计此类算法时遗漏的目标是WSN的能力,以确保在保持自组织性的同时准确重建感测场。在这项工作中,我们制定了一个通用框架,在该框架中,来自所得簇的数据可确保簇中信号处理问题的适度性。我们开发了使用二阶统计量的二阶数据耦合聚类(SODCC)算法和分布式压缩投影主成分分析(D-CPPCA)算法。形成集群的条件是D-CPCCA不会解析任何给定集群中的主要组件。我们证明,SODCC具有可伸缩性,并且与其他知名的SOA相比,具有相似或更好的消息复杂性。我们使用实际的LS-WSN通过广泛的计算机仿真来验证这些结果。我们还表明,与其他最新的SOA相比,SODCC的性能在任何压缩率下都更好,并且无需事先调整任何参数。最后,我们证明,SODCC在能耗方面与其他节能聚类算法相比非常出色,同时在数据重建方面也表现出色(平均SNR)。

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