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A clustering approximation mechanism based on data spatial correlation in wireless sensor networks

机译:无线传感器网络中基于数据空间相关性的聚类近似机制

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In wireless sensor networks (WSNs), the sensor nodes that locate near often sense the similar data, however, transmitting the repeated or redundant data often cause unnecessary energy consumption. Aiming at this point, this paper firstly proposes a gridbased spatial correlation clustering (GSCC) method which clusters the sensor nodes according to data correlation. According to GSCC, in the same cluster the member nodes have high similarity. Based on GSCC, then this paper proposes a spatial correlation clustering approximation framework (SCCAF). SCCAF can largely save networks' energy by which the cluster head estimates the data of its member nodes provided that approximation value is in the allowable error range. Experiments prove that not only SCCAF based on GSCC method can prolong the lifetime of the sensor networks compared with LEACH but also SCCAF guarantees more accuracy than CASA (clustering-based approximate scheme for data aggregation) which is a previous approximation scheme.
机译:在无线传感器网络(WSN)中,定位近常感测类似数据的传感器节点,然而,发送重复或冗余数据通常会导致不必要的能量消耗。目不的是,本文首先提出了一种基于数据相关性集群传感器节点的基于网格的空间相关聚类(GSCC)方法。根据GSCC,在相同的群集中,成员节点具有高相似性。基于GSCC,本文提出了空间相关聚类近似框架(SCCAF)。 SCCAF可以在很大程度上节省网络的能量,而群集头估计其成员节点的数据,则提供了近似值在允许误差范围内。实验证明,与基于GSCC方法的SCCAF可以延长传感器网络的寿命与浸出相比,但SCCAF也能保证比CASA(基于聚类的数据聚集的近似方案)的精度,这是一个先前的近似方案。

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