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SOFM Neural Network Based Hierarchical Topology Control for Wireless Sensor Networks

机译:基于SOFM神经网络的无线传感器网络分层拓扑控制

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Well-designed network topology provides vital support for routing, data fusion, and target tracking in wireless sensor networks (WSNs). Self-organization feature map (SOFM) neural network is a major branch of artificial neural networks, which has self-organizing and self-learning features. In this paper, we propose a cluster-based topology control algorithm for WSNs, named SOFMHTC, which uses SOFM neural network to form a hierarchical network structure, completes cluster head selection by the competitive learning among nodes, and takes the node residual energy and the distance to the neighbor nodes into account in the clustering process. In addition, the approach of dynamically adjusting the transmitting power of the cluster head nodes is adopted to optimize the network topology. Simulation results show that SOFMHTC may get a better energy-efficient performance and make more balanced energy consumption compared with some existing algorithms in WSNs.
机译:精心设计的网络拓扑为无线传感器网络(WSN)中的路由,数据融合和目标跟踪提供了至关重要的支持。自组织特征图(SOFM)神经网络是人工神经网络的主要分支,具有自组织和自学习特征。在本文中,我们提出了一种基于集群的无线传感器网络拓扑控制算法,即SOFMHTC,该算法使用SOFM神经网络形成一个分层的网络结构,通过节点之间的竞争性学习来完成簇头的选择,并获取节点的剩余能量和在聚类过程中要考虑到邻居节点的距离。另外,采用动态调整簇头节点发送功率的方法来优化网络拓扑。仿真结果表明,与WSN中的某些现有算法相比,SOFMHTC可能具有更好的节能性能,并使能耗更加均衡。

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