2025 : 9 : 29

Kamran Kheiralipour

Academic rank: Associate Professor
ORCID:
Education: PhD.
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HIndex:
Faculty: Agriculture
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Research

Title
Feasibility study of detecting some milk adulterations using a LED-based Vis-SWNIR photoacoustic spectroscopy system
Type
JournalPaper
Keywords
Cow’s milk Adulteration Chemometrics Classification Principle component analysis Artificial neural networks Support vector machine
Year
2023
Journal FOOD CHEMISTRY
DOI
Researchers Fatemeh Sharifi ، Mojtaba Naderi-Boldaji ، Mahdi Ghasemi-Varnamkhasti ، Kamran Kheiralipour ، Mohsen Ghasemi ، Ali Maleki

Abstract

The aim of this study is to evaluate a previousely developed photoacoustic spectroscopy system with light sources of visible to short-wave near infrared (Vis-SWNIR, 395–940 nm) for detection of adulterations in cow’s milk including formalin, urea, hydrogen peroxide, starch, sodium hypochlorite, and detergent powder. The results of principal component analysis (PCA) showed a very good visual differentiation of different adulterations. The artificial neural networks (ANN) showed the highest classification accuracy (97.6 %) in detection of adulteration type and adulteration level (nearly 100 %). It can be generally concluded that the Vis-SWNIR photoacoustic spectroscopy system is a reliable and potent instrument for detecting various types of milk adulterations. Further studies are suggested with including cow’s milk of different sources with probable variations in composition to generalize the findings of the present study. With the extension of the light sources to the range of long-wave NIR, the system can be applied as a diagnostic tool for quality evaluation of other liquid foods.