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Cluster-Based Correlated Data Gathering in Wireless Sensor Networks

机译:基于群集的相关数据在无线传感器网络中收集

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We consider the problem of optimal cluster-based data gathering in Wireless Sensor Networks (WSNs) when nearby readings are spatially correlated. Due to the dense nature of WSNs, data samples taken from nearby locations are statistically similar. We show how this data correlation can be exploited to reduce the amount of data to be transmitted in the network and thus conserve energy. While much attention in recent years has been paid to analyzing and optimizing cluster-based WSNs from various perspectives, the problem of energy-efficient clustering of WSNs in presence of data correlation is not yet fully explored. In this paper, we model a single-cluster network and analytically characterize the optimal cluster size subject to its distance from the sink as well as the degree of correlation. Contrary to existing approaches, our findings show that heterogeneous-sized clusters, where the clusters further from the sink are larger, are more energy-efficient. We also propose a heuristic greedy clustering algorithm to find a near-optimal solution to the problem of energy-efficient clustering. Simulation results confirm the effectiveness of having heterogeneous-sized clusters in WSNs.
机译:我们考虑当附近读数在空间相关时,考虑在无线传感器网络(WSNS)中收集最佳基于群集的数据的问题。由于WSN的密集性,从附近的位置采取的数据样本是统计上相似的。我们展示了如何利用该数据相关性以减少在网络中传输的数据量,从而节省能量。近年来,近年来的重视已经支付了以各种观点分析和优化基于集群的WSN,但尚未完全探索在数据相关存在下在数据相关的情况下节能集群的问题。在本文中,我们模拟了一个单簇网络,并分析了从宿接收器的距离的最佳簇大小以及相关程度的表征。与现有方法相反,我们的研究结果表明,异质尺寸的簇,其中进一步从水槽进一步较大,更节能。我们还提出了一种启发式贪婪聚类算法,可以找到近最佳解决方案对节能集群的问题。仿真结果证实了WSN中具有异质大小簇的有效性。

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