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首页> 外文期刊>Journal of information and optimization sciences >CABMD: A new clustering algorithm based on membership degree of node for mobile ad hoc networks
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CABMD: A new clustering algorithm based on membership degree of node for mobile ad hoc networks

机译:CABMD:一种基于节点隶属度的移动自组织网络新聚类算法

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In this paper, we propose clustering algorithm based on the membership degree of node for mobile ad hoc networks (CABMD). The aim of CABMD focuses on cluster-head election and cluster formation. The cluster - head election is based on quality of node that is calculated by a combination of characteristics such as connectivity, energy and mobility of nodes. The node has the best quality among all of the nodes is elected as first cluster-head and forms its cluster based on the membership degree of the node that is related to its quality and distance between the cluster-head and node. This procedure follows for election of next cluster-heads and formation of their clusters until all of the nodes in the network are elected as cluster-heads or cluster-members. This study uses the characteristics of CEMCA algorithm and tries to improve its performance by a new method. We apply membership degree for clustering, so that the performance of clusters in the network will be improved. We have simulated our algorithm (CABMD) by NS-2 in order to measure the performance of it. Our results will be compared with the Weighted Clustering Algorithm (WCA), connectivity, energy and mobility driven weighted clustering algorithm (CEMCA) and connectivity, residual battery power, average mobility, and distance algorithm (CBMD).
机译:本文提出了一种基于节点隶属度的移动自组织网络(CABMD)聚类算法。 CABMD的目标集中在集群首长选举和集群形成上。簇头选举基于节点的质量,而节点的质量是由节点的连通性,能量和移动性等特征的组合计算得出的。在所有节点中质量最高的节点被选为第一个簇头,并根据与该节点的质量和簇头与节点之间的距离有关的节点隶属度来形成其簇。依次选择下一个簇头和形成它们的簇,直到网络中的所有节点都被选为簇头或簇成员为止。本研究利用了CEMCA算法的特点,试图通过一种新的方法来提高其性能。我们将成员资格级别应用于集群,以便提高网络中集群的性能。为了评估其性能,我们使用NS-2模拟了我们的算法(CABMD)。我们的结果将与加权聚类算法(WCA),连接性,能源和移动性驱动的加权聚类算法(CEMCA)和连接性,剩余电池电量,平均移动性和距离算法(CBMD)进行比较。

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