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Multiple Parameter Based Clustering (MPC): Prospective Analysis for Effective Clustering in Wireless Sensor Network (WSN) Using K-Means Algorithm

机译:基于多参数的聚类(MPC):使用K均值算法的无线传感器网络(WSN)中有效聚类的前瞻性分析

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In wireless sensor network cluster architecture is useful because of its inherent suitability for data fusion. In this paper we represent a new approach called Multiple Parameter based Clustering (MPC) embedded with the traditional k-means algorithm which takes different parameters (Node energy level, Euclidian distance from the base station, RSSI, Latency of data to reach base station) into consideration to form clusters. Then the effectiveness of the clusters is evaluated based on the uniformity of the node distribution, Node range per cluster, Intra and Inter cluster distance and required energy level of each centroid. Our result shows that by varying multiple parameters we can create clusters with more uniformly distributed nodes, minimize intra and maximize inter cluster distance and elect less power consuming centroid.
机译:在无线传感器网络中,集群架构之所以有用,是因为其固有的适用于数据融合的特性。在本文中,我们介绍了一种嵌入了传统k均值算法的称为多参数聚类(MPC)的新方法,该算法采用不同的参数(节点能级,与基站的欧几里得距离,RSSI,数据到达基站的延迟)考虑形成集群。然后,根据节点分布的均匀性,每个群集的节点范围,群集内和群集间距离以及每个质心的所需能级来评估群集的有效性。我们的结果表明,通过更改多个参数,我们可以创建具有更均匀分布的节点的群集,最小化群集内距离并最大化群集间距离,并选择功耗更低的质心。

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