Journal of Jilin University(Information Science Ed

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Spectrum Feature Extraction Method Based on YSPSO-RBFN High-Precision Brillouin Scattering

MENG Chuannana,b,SUI Yanga,b,ZHANG Jiea,b,WANG Yuea,b,DONG Weia,b,ZHANG Xindonga,b,RUAN Shengpinga,b   

  1. a. College of Electronic Science and Engineering; b. Integrated Optoelectronics Key Laboratory,Jilin University,Changchun 130012,China
  • Received:2018-03-12 Online:2018-07-24

Abstract: In order to improve the extraction to the sensing of brillouin scattering spectrum of the accuracy of brillouin frequency deviation,the squeezing factor of using particle swarm optimization algorithm is used to adjust the weights of RBFN ( Radial Basis Function Net) network. The proposed algorithm overcomes the shortcoming of traditional RBFN neural network which is easy to fall into local extremum. Using PSO ( Particle Swarm Optimization) algorithm after adjust the weights to the transmission network,precision of brillouin scattering spectrum are extracted,ensurimg the solution speed and precision. In the process of numerical analysis,a new algorithm is used to estimate the scattering spectra of different line width and different SNR( Signal Noise Ratio) at different temperatures. Through the experiment the brillouin scattering spectrum data are obtained. Using YSPSORBFN( Particle Swarm Optimization with Shinkage Factor Shirnhage Factor-Radical Basis Function) algorithm to deal with the experimental data,the results show that the algorithm can improve the accuracy of brillouin scattering spectrum feature extraction,the fitting error is 1. 99 MHz,under 25 ℃ when temperature fitting error is reduced.In 85 ℃ the frequency shift of fitting error is 0. 047 MHz. Therefore,when the algorithm is applied to the scattering temperature and strain sensing system of brillouin,it has great application prospect in improving detection accuracy.

Key words: temperature, optical fiber optics, compression factor particle swarm algorithm;radial basis function net ( RBFN) neural network, distributed optical fiber sensing

CLC Number: 

  • TN247