Abstract

In a localization system, time difference of arrival technique is widely used to estimate the location of a mobile station. To improve the performance of mobile station location estimation, a novel algorithm-based artificial neural network ensemble and time difference of arrival information is proposed in non-line-of-sight environments. Back propagation neural network is a classic artificial neural network and may be effectively used for mathematical modeling and prediction, and an artificial neural network ensemble has better generalization ability and stability than a single network. First, the parameters, such as the weights and biases of the single neural network are optimized by the ant lion optimization method which is novel and effective. Then four types of different information from the time difference of arrival measurements are respectively used to train the individual neural network. Finally, the weighted average method is improved to combine the outputs of the different individual neural network, where weights are determined by the training errors. The estimation accuracy of the locating system is evaluated through experimental measurements. The simulation results show that the proposed algorithm is efficient in improving the generalization ability and localization precision of the neural network ensemble model.

Highlights

  • With the rapid development of sensor technology, the demand for positioning is becoming more and more popular

  • The source localization technique has become the research hotspot in recent years, which can be used in localization of sound, radio frequency, and optical sensors.[1,2]

  • The research by AlonsoGonzalez et al.[17] focus on to propose a fingerprinting indoor positioning estimation system based on Neural networks (NNs) to predict the device position in a 3D environment, and the localization system is built using a data set of received signal strength coming from a grid of different points

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Summary

Introduction

With the rapid development of sensor technology, the demand for positioning is becoming more and more popular. On the basis of the obtained TDOAs and accurate sound source positions, the performance of NN-based method was examined using a large number of samples in terms of different acoustic sensors setups, network configurations and training parameters.[16] The research by AlonsoGonzalez et al.[17] focus on to propose a fingerprinting indoor positioning estimation system based on NNs to predict the device position in a 3D environment, and the localization system is built using a data set of received signal strength coming from a grid of different points.

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