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A Novel Data Fusion Strategy Based on Extreme Learning Machine Optimized by Bat Algorithm for Mobile Heterogeneous Wireless Sensor Networks

机译:一种基于极端学习机的蝙蝠算法对移动异构无线传感器网络优化的新型数据融合策略

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摘要

In order to effectively reduce the redundant information transmission in the network, a data fusion algorithm based on extreme learning machine optimized by bat algorithm for mobile heterogeneous wireless sensor networks is proposed. In this paper, the data fusion process of mobile heterogeneous wireless sensor networks is mainly studied, and regards the nodes of wireless sensor networks as neurons in the neural network of extreme learning machines. The neural network of the extreme learning machine extracts the sensory data collected by mobile heterogeneous wireless sensor network and combines the collected sensor data with the clustering route to greatly reduce the amount of network data sent to the sink node. Aiming at the problem that the extreme learning machine randomly generates the input layer weight and the hidden layer threshold before training, the output result is unstable, affecting the data fusion efficiency and the long delay, a new method of data fusion for mobile heterogeneous wireless sensor networks based on extreme learning machine optimized by bat algorithm is proposed. Simulation experiments are carried out from two aspects: mobile heterogeneous wireless sensor networks and heterogeneous mobile heterogeneous wireless sensor networks. The simulation results show that compared with the traditional SEP algorithm, BP neural network algorithm and ELM algorithm, the proposed BAT-ELM-based data fusion algorithm can effectively reduce network traffic, save network energy, improve network work efficiency, and significantly prolong network & x2019;s lifetime.
机译:为了有效地降低网络中的冗余信息传输,提出了一种基于由BAT算法针对移动异构无线传感器网络进行优化的基于极端学习机的数据融合算法。本文主要研究了移动异构无线传感器网络的数据融合过程,并将无线传感器网络的节点视为极端学习机神经网络中的神经元。极端学习机的神经网络提取由移动异构无线传感器网络收集的感官数据,并将收集的传感器数据与聚类路线组合,从而大大减少发送到宿节点的网络数据量。针对极端学习机器在训练前随机产生输入层权重和隐藏层阈值的问题,输出结果不稳定,影响数据融合效率和长延迟,是移动异构无线传感器的数据融合的新方法提出了基于BAT算法优化的基于极端学习机的网络。仿真实验由两个方面进行:移动异构无线传感器网络和异构移动异构无线传感器网络。仿真结果表明,与传统的SEP算法,BP神经网络算法和ELM算法相比,所提出的基于BAT-ELM的数据融合算法可以有效地降低网络流量,节省网络能源,提高网络工作效率,显着延长网络x2019; s一生。

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