Data fusion algorithms for wireless sensor networks based on deep learning model

Lihong Wang, Kuiliang Xia
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引用次数: 4

Abstract

In order to reduce the energy consumption and prolong the lifetime of wireless sensor networks (WSN), a data fusion algorithm based on deep learning model is proposed. Firstly, the algorithm completes training and clustering at the sink node, transfers the trained parameters to each cluster node, and then transfers the collected data to the sink node after feature classification, extraction and fusion. In order to make the distribution of cluster heads more uniform, the clustering method is improved on the basis of estimating the optimal number of cluster heads, which reduces the number of clusters and saves the energy consumption of the network. The simulation results show that the WSN data fusion algorithm based on deep learning model reduces the network energy consumption, prolongs the network lifetime, and is more suitable for large-scale telecommunication.
基于深度学习模型的无线传感器网络数据融合算法
为了降低无线传感器网络的能量消耗,延长其寿命,提出了一种基于深度学习模型的数据融合算法。该算法首先在汇聚节点完成训练和聚类,将训练好的参数传递到每个聚类节点,然后将采集到的数据经过特征分类、提取和融合后传递到汇聚节点。为了使簇头分布更加均匀,在估计最优簇头数量的基础上对聚类方法进行了改进,减少了簇的数量,节约了网络的能耗。仿真结果表明,基于深度学习模型的WSN数据融合算法降低了网络能耗,延长了网络生命周期,更适合大规模通信。
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