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首页> 外文期刊>Advances in Science and Technology Research Journal >COMBINING FUZZY AND CELLULAR LEARNING AUTOMATA METHODS FOR CLUSTERING WIRELESS SENSOR NETWORK TO INCREASE LIFE OF THE NETWORK
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COMBINING FUZZY AND CELLULAR LEARNING AUTOMATA METHODS FOR CLUSTERING WIRELESS SENSOR NETWORK TO INCREASE LIFE OF THE NETWORK

机译:模糊学习与自动学习相结合的方法来建立无线传感器网络以提高网络寿命

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Wireless sensor networks have attracted attention of researchers considering their abundant applications. One of the important issues in this network is limitation of energy consumption which is directly related to life of the network. One of the main works which have been done recently to confront with this problem is clustering. In this paper, an attempt has been made to present clustering method which performs clustering in two stages. In the first stage, it specifies candidate nodes for being head cluster with fuzzy method and in the next stage, the node of the head cluster is determined among the candidate nodes with cellular learning automata. Advantage of the clustering method is that clustering has been done based on three main parameters of the number of neighbors, energy level of nodes and distance between each node and sink node which results in selection of the best nodes as a candidate head of cluster nodes. Connectivity of network is also evaluated in the second part of head cluster determination. Therefore, more energy will be stored by determining suitable head clusters and creating balanced clusters in the network and consequently, life of the network increases.
机译:考虑到无线传感器网络的广泛应用,无线传感器网络已引起研究人员的关注。该网络中的重要问题之一是能量消耗的限制,其与网络的寿命直接相关。集群是解决这一问题的主要工作之一。在本文中,已尝试提出一种在两个阶段执行聚类的聚类方法。在第一阶段,通过模糊方法指定候选节点为头部簇,在下一阶段,利用细胞学习自动机在候选节点中确定头部簇的节点。聚类方法的优点在于,已经基于邻居数量,节点的能量水平以及每个节点与宿节点之间的距离这三个主要参数进行了聚类,这导致选择最佳节点作为聚类节点的候选头。在头簇确定的第二部分中还将评估网络的连通性。因此,通过确定合适的头簇并在网络中创建平衡的簇,将存储更多的能量,因此,网络的寿命会增加。

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