基于模糊理论的无线传感器网络不均匀聚类算法

Ke Lu, Bing Fan, Yi Sun
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引用次数: 1

摘要

在无线传感器网络中,聚类算法显著延长了网络的生存期。网络通常被组织成大小相等的簇,但这种均匀的聚类方法导致簇头(CHs)的负载不相等。为了平衡网络节点的能耗,提出了一种基于模糊理论的不均匀聚类算法(FTCA)。该算法同时考虑了节点在CHs选择过程中的位置和剩余能量,对聚类概率进行了优化。利用模糊理论中的三角模算子对基于位置的隶属度函数和剩余能量的隶属度函数进行积分。节点为CH的概率由融合结果决定。因此,网络被划分为不均匀的集群。仿真结果表明,FTCA可以有效地平衡和降低网络能耗,并明显延长网络寿命。
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An Uneven Clustering Algorithm Based on Fuzzy Theory for Wireless Sensor Networks
In wireless sensor networks, clustering algorithm prolongs network lifetime significantly. The network is often organized into clusters of equal size, but such even clustering method results in unequal loads on the cluster heads(CHs). To balance the energy consumption of the network nodes, an uneven Clustering Algorithm based on Fuzzy Theory(FTCA) is proposed. With the consideration of both the node's location and residual energy during CHs election, the algorithm optimizes the clustering probability. Triangle module operator in fuzzy theory is used to integrate the degree of location-based membership function and that of the residual energy. And the probability for a node to be a CH is decided by fusion result. Therefore, the network is divided into uneven clusters. Simulation results show that FTCA effectively balances and reduces the energy consumption of the network, and obviously prolongs the network lifetime.
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