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J Agric Food Chem


Title:Floral classification of honey using mid-infrared spectroscopy and surface acoustic wave based z-Nose Sensor
Author(s):Tewari JC; Irudayaraj JM;
Address:"Department of Biological Sciences, Purdue University, West Lafayette, Indiana 46907, USA. jtewari@purdue.edu"
Journal Title:J Agric Food Chem
Year:2005
Volume:53
Issue:18
Page Number:6955 - 6966
DOI: 10.1021/jf050139z
ISSN/ISBN:0021-8561 (Print) 0021-8561 (Linking)
Abstract:"Fourier transform infrared spectroscopy (FTIR) and z-Nose were used as screening tools for the identification and classification of honey from different floral sources. Honey samples were scanned using microattenuated total reflectance spectroscopy in the region of 600-4000 cm(-1). Spectral data were analyzed by principal component analysis, canonical variate analysis, and artificial neural network for classification of the different honey samples from a range of floral sources. Classification accuracy near 100% was achieved for clover (South Dakota), buckwheat (Missouri), basswood (New York), wildflower (Pennsylvania), orange blossom (California), carrot (Louisiana), and alfalfa (California) honey. The same honey samples were also analyzed using a surface acoustic wave based z-Nose technology via a chromatogram and a spectral approach, corrected for time shift and baseline shifts. On the basis of the volatile components of honey, the seven different floral honeys previously mentioned were successfully discriminated using the z-Nose approach. Classification models for FTIR and z-Nose were successfully validated (near 100% correct classification) using 20 samples of unknown honey from various floral sources. The developed FTIR and z-Nose methods were able to detect the floral origin of the seven different honey samples within 2-3 min based on the developed calibrations"
Keywords:"Acoustics Amino Acids/analysis Analysis of Variance Carbohydrates/analysis Electronics Flowers/*chemistry Honey/*analysis/*classification Neural Networks, Computer Odorants/analysis Sensitivity and Specificity *Spectroscopy, Fourier Transform Infrared;"
Notes:"MedlineTewari, Jagdish C Irudayaraj, Joseph M K eng 2005/09/01 J Agric Food Chem. 2005 Sep 7; 53(18):6955-66. doi: 10.1021/jf050139z"

 
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