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Adaptive MCFL: An adaptive multi-clustering algorithm using fuzzy logic in wireless sensor network

机译:自适应MCFL:无线传感器网络中使用模糊逻辑的自适应多聚类算法

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In the past, numerous algorithms were tasked with clustering nodes in wireless sensors networks. Each of these algorithms has its own advantages and disadvantages. The common denominator of all these approaches is the constancy of the algorithm in all the rounds of network lifetime that causes the selection of cluster heads in each round. Failing to select the best nodes as cluster heads leads to holding elections in each round. By comparing the chance of each node to be selected as a cluster head using a random number, the majority of these clustering approaches, both fuzzy and non-fuzzy, destroy the chance of selecting the most eligible node as cluster head. As a result, all these approaches require the selection of cluster heads in each round. Selecting cluster heads in each round increases the amount of received and sent messages such that in networks with large number of nodes, it causes some problems such as energy reduction, collision increase, and network traffic. However, by selecting the most eligible nodes as cluster heads and trusting them for at least a few rounds, the amount of sent and received messages is reduced. In this article, an adaptive multiclustering algorithm using fuzzy logic in wireless sensor network (Adaptive MCFL) is presented. In addition to clustering nodes in different rounds using different clustering algorithms, the proposed algorithm avoids selecting new cluster heads by trusting previous cluster heads leading to a reduction in the number of messages and saving energy. The proposed approach is compared with other approaches in three different scenarios using indices such as remaining energy, the number of dead nodes, first node dies (FND), half of nodes die (HND), and last node dies (LND). Results reveal that Adaptive MCFL has as advantage over other approaches. (C) 2017 Elsevier B.V. All rights reserved.
机译:过去,无线传感器网络中的群集节点需要执行大量算法。这些算法中的每一种都有其自身的优点和缺点。所有这些方法的共同点是在网络生命周期的所有回合中算法的稳定性,这会导致在每个回合中选择簇头。未能选择最佳节点作为簇头会导致每轮选举。通过使用随机数比较每个节点被选为簇头的机会,这些聚类方法中的大多数(模糊和非模糊)都破坏了选择最合适的节点作为簇头的机会。结果,所有这些方法都需要在每一轮中选择簇头。在每一轮中选择簇头会增加接收和发送的消息量,从而在具有大量节点的网络中会引起一些问题,例如能耗减少,冲突增加和网络流量。但是,通过选择最合适的节点作为群集头并信任它们至少几轮,可以减少发送和接收的消息量。本文提出了一种在无线传感器网络中使用模糊逻辑的自适应多聚类算法(Adaptive MCFL)。除了使用不同的聚类算法在不同回合中对节点进行聚类之外,该算法还通过信任先前的簇头来避免选择新的簇头,从而减少了消息数量并节省了能源。在三种不同的情况下,使用诸如剩余能量,死节点数,第一个节点裸片(FND),一半的节点裸片(HND)和最后一个节点裸片(LND)等索引,将该提议的方法与其他方法进行比较。结果表明,自适应MCFL具有优于其他方法的优势。 (C)2017 Elsevier B.V.保留所有权利。

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