Detection and classification of honey samples using FTIR spectroscopy and multivariate statistical analysis

Honey is a sweet and natural food product produced by bees which is mainly composed of sugar. Honey is also a rich source of amino acids, vitamins, minerals and other biologically active compounds. These properties lead to the widespread use of honey and increase the demand for honey around the worl...

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Bibliographic Details
Main Authors: Maryam Bahreini, Reyhaneh Nabizadeh, Nastaran Ragerdi Kashani
Format: Article
Language:English
Published: Isfahan University of Technology 2022-11-01
Series:Iranian Journal of Physics Research
Subjects:
Online Access:https://ijpr.iut.ac.ir/article_3311_06ca4970f66a9fe366ce7fa28497aae5.pdf
Description
Summary:Honey is a sweet and natural food product produced by bees which is mainly composed of sugar. Honey is also a rich source of amino acids, vitamins, minerals and other biologically active compounds. These properties lead to the widespread use of honey and increase the demand for honey around the world. Therefore, it is so important to make sure that the honey is genuine or counterfeit.  In this study, FTIR spectra of 6 honey samples of forty-herb honey and Zirofen honey in 10%, 30% and 50% water concentrations and 2 glucose syrup with 10% and 30% concentrations were acquired and analysed using multivariate statistical analysis. The classification results indicate a proper distinction between genuine honey and counterfeit sample. The aim of this study was to provide a cheap, fast and accurate classification method for honey authentication and shows that FTIR method combined by multivariate statistical analysis is a useful tool for testing the authenticity of honey
ISSN:1682-6957
2345-3664