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Spectral partitioning and fuzzy C-means based clustering algorithm for big data wireless sensor networks

机译:基于频谱分区和模糊基于C型基于大数据无线传感器网络的聚类算法

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摘要

In wireless sensor networks, sensor nodes are usually powered by battery and thus have very limited energy. Saving energy is an important goal in designing a WSN. It is known that clustering is an effective method to prolong network lifetime. Due to the development of big data, there are more sensor nodes and data needed to process. So how to cluster sensor nodes cooperatively and achieve an optimal number of clusters in a big data WSN is an open issue. In this paper, we first propose an analytical model to give the optimal number of clusters in a wireless sensor network. We then propose a centralized cluster algorithm based on spectral partitioning method. After that, we present a distributed implementation of the clustering algorithm based on fuzzy C-means method. Finally, we conduct extensive simulations, and the results show that the proposed algorithms outperform the hybrid energy-efficient distributed (HEED) clustering algorithm in terms of energy cost and network lifetime.
机译:在无线传感器网络中,传感器节点通常由电池供电,因此能量非常有限。 节省能源是设计WSN的重要目标。 众所周知,聚类是延长网络寿命的有效方法。 由于大数据的开发,还有更多的传感器节点和流程所需的数据。 因此,如何在大数据中协同播放传感器节点并在大数据中实现最佳数量的群集。 在本文中,我们首先提出了一种分析模型来提供无线传感器网络中的最佳簇数。 然后,我们提出了一种基于频谱分区方法的集中式群集算法。 之后,我们介绍了基于模糊C-均值方法的聚类算法的分布式实现。 最后,我们进行了广泛的模拟,结果表明,该算法在能量成本和网络寿命方面优于混合节能分布式(HEEED)聚类算法。

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