Abstract

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's lifetime.

Highlights

  • At present, mobile heterogeneous wireless sensor networks (MHWSNs) have been widely used in various fields for the monitoring of various events, such as forest fire prevention, industrial environmental monitoring, and rehabilitation medical care [1], [2]

  • Aiming at the problem that the extreme learning machine randomly generates the input layer weight and the hidden layer threshold before training, which leads to unstable output, affecting data fusion efficiency and long delay, in this paper we propose a new method for mobile sensor network data fusion based on extreme learning machine optimized by bat algorithm

  • PERFORMANCE EVALUATION AND RESULTS ANALYSIS In order to better reflect the performance of the data fusion algorithm of MHWSNs proposed in this paper, we use MATLAB 2014b simulation software for experimental and performance comparison analysis

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Summary

INTRODUCTION

Mobile heterogeneous wireless sensor networks (MHWSNs) have been widely used in various fields for the monitoring of various events, such as forest fire prevention, industrial environmental monitoring, and rehabilitation medical care [1], [2]. Without the use of the information fusion technology, it will be more difficult for the link layer to schedule data from the different sensor nodes, and the collisions will increase, which reduces the efficiency of the communication and affects the timeliness of information collection. In order to avoid the above problems, the sensor network needs to use data fusion technology in the process of collecting data, which reduces the transmission amount of information in the network, and reduces the power consumption of the node while saving network communication bandwidth. B. CONTRIBUTION In this work, a new method of data fusion for mobile heterogeneous wireless sensor networks based on extreme learning machine optimized by bat algorithm is proposed.

RELATED WORK
EXTREME LEARNING MACHINE OPTIMIZED BY BAT ALGORITHM
THE BAT ALGORITHM
PERFORMANCE EVALUATION AND RESULTS ANALYSIS
COMPARISON OF NETWORK LOAD BALANCE
DATA FUSION RATE COMPARISON OF NETWORK
COMPARISON OF NETWORK TRANSMISSION DELAY
COMPARISON OF THE CONNECTIVITY OF THE NETWORK
CONCLUSION
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