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Volume 34 Issue 6
Mar.  2011
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Recognition of alcohol-free beer by fluorescent spectroscopy and probabilistic neural network

  • Corresponding author: CHEN Guo-qing, cgq2098@163.com
  • Received Date: 2009-11-25
    Accepted Date: 2010-01-15
  • In order to identify alcohol-free beer and ordinary beer quickly and accurately,a recognition model of the alcohol-free beer was established,which was based on fluorescent spectroscopy and probabilistic neural network.It was found experimentally that both alcohol-free beer and ordinary beer excited by ultraviolet-visible light could generate strong fluorescence. The fluorescent spectrum for alcohol-free beer is within a range from 420nm to 620nm,its peak wavelength of the fluorescence is about 490nm.The approximate coefficients,obtained by wavelet transform,were used as the network data,and a probabilistic neural network was trained and constructed.The trained probabilistic neural network was employed to recognize sixty beer samples,and the recognition rate was up to 98.33%.The whole research outcomes will provide a new method for recognizing alcohol-free beer.
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    沈阳化工大学材料科学与工程学院 沈阳 110142

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Recognition of alcohol-free beer by fluorescent spectroscopy and probabilistic neural network

    Corresponding author: CHEN Guo-qing, cgq2098@163.com
  • 1. School of Science, Jiangnan University, Wuxi 214122, China

Abstract: In order to identify alcohol-free beer and ordinary beer quickly and accurately,a recognition model of the alcohol-free beer was established,which was based on fluorescent spectroscopy and probabilistic neural network.It was found experimentally that both alcohol-free beer and ordinary beer excited by ultraviolet-visible light could generate strong fluorescence. The fluorescent spectrum for alcohol-free beer is within a range from 420nm to 620nm,its peak wavelength of the fluorescence is about 490nm.The approximate coefficients,obtained by wavelet transform,were used as the network data,and a probabilistic neural network was trained and constructed.The trained probabilistic neural network was employed to recognize sixty beer samples,and the recognition rate was up to 98.33%.The whole research outcomes will provide a new method for recognizing alcohol-free beer.

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