基于模糊可能性c均值聚类算法的无线传感器网络性能改进

Shweta Kushwaha, K. S. Jadon
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引用次数: 1

摘要

小型无线传感器配备微机械系统、无线通信技术、数字系统。传感器节点理解给定功能的有限区域。为了收集更大范围的信息,数据中心需要与中心传感器节点协同收集。这些协作功能传感器创建了一个无线传感器网络。在之前的工作中,他们使用K-Medoids算法来形成集群和簇头,以便从源节点向基站进行数据库广播。k -媒质算法主要是不利的,因为它们不适合聚类任意组的对象。简而言之,它们使用紧凑性作为聚类参数,而不是连通性,以最小化非媒质对象或媒质(聚类中心)之间的差异。缺点是,即使前k个介质是随机选择的,在同一数据集的不同运行中也会产生不同的结果。模糊概率c均值算法克服了这些缺点,提高了网络的性能。在MATLAB工具上进行了仿真,结果表明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Performance Using Fuzzy Possibilistic C-Means Clustering Algorithm in Wireless Sensor Network
Small wireless sensors are equipped with micromechanical systems, & wireless communication technologies, digital systems. A Sensor Node understands the limited area for given functionality. In order to gather information on a large area, data centers need to be collected in cooperation with a center sensor node. These co-operative functional sensors create a wireless sensor network.In the previous work, they used K-Medoids Algorithm to form the clusters and Cluster heads for databroadcast towards the base station from the source node. K-Medoid algorithms are primarily disadvantageous because they are not ideal for clustering arbitrary groups of objects. It is that they use compactness as clustering parameters, in short, rather than connectivity, to minimize differences among non-medoid objects or medoids (cluster center). The drawback, even though the first k medoids are selected randomly, can produce different results on different runs in the same dataset. These drawbacks are overcome in Fuzzy Probabilistic C-Means Algorithm & increasethe performance of the network. Simulation is performed on MATLAB tool & results show the effectiveness of the proposed work.
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