TY - JOUR
T1 - Employing artificial neural networks and fluorescence spectrum for food vegetable oils identification
AU - Pranoto, Wawan Joko
AU - Al-Shawi, Sarmad Ghazi
AU - Chetthamrongchai, Paitoon
AU - Chen, Tzu Chia
AU - Petukhova, Ekaterina
AU - Nikolaeva, Natalia
AU - Abdelbasset, Walid Kamal
AU - Yushchenkо, Natalya Anatolyevna
AU - Aravindhan, Surendar
N1 - Publisher Copyright:
© 2022, Sociedade Brasileira de Ciencia e Tecnologia de Alimentos, SBCTA. All rights reserved.
PY - 2022
Y1 - 2022
N2 - Vegetable oils (VOs) come in a wide range of flavors and trademarks. VOs are very similar in appearance, flavor, and taste, and it’s frequently difficult to tell them from just by looking at them. Approaches for classifying these oils are sometimes expensive and time-intensive, and they frequently include analytical chemical techniques as well as mathematical algorithms like as Artificial Neural Networks (ANNs), Properties of Partial Least Squares (PLS), Principal Components Regression (PCR), and Principal Component Analysis (PCA) to enhance their effectiveness. Because of the large range of goods available, more productive techniques for qualifying, characterizing, and classifying these substances are required, as the ultimate cost should indicate the quality of the commodity that reaches the user. This study provides a technique for classifying VOs such as different manufacturers’ soybean, corn, sunflower, and canola. This method utilized a Charge-Coupled Device (CCD) array sensor, a light emission diode, and a straightforward mathematical approach to capture the generated fluorescence spectrum (FS) in diluted oil. The spectrum classifications are performed using an ANN with three layers, each having four neurons. The approach can categorize VO and enables rapid network training with a 72% success rate utilizing only a few mathematical changes in the spectra data.
AB - Vegetable oils (VOs) come in a wide range of flavors and trademarks. VOs are very similar in appearance, flavor, and taste, and it’s frequently difficult to tell them from just by looking at them. Approaches for classifying these oils are sometimes expensive and time-intensive, and they frequently include analytical chemical techniques as well as mathematical algorithms like as Artificial Neural Networks (ANNs), Properties of Partial Least Squares (PLS), Principal Components Regression (PCR), and Principal Component Analysis (PCA) to enhance their effectiveness. Because of the large range of goods available, more productive techniques for qualifying, characterizing, and classifying these substances are required, as the ultimate cost should indicate the quality of the commodity that reaches the user. This study provides a technique for classifying VOs such as different manufacturers’ soybean, corn, sunflower, and canola. This method utilized a Charge-Coupled Device (CCD) array sensor, a light emission diode, and a straightforward mathematical approach to capture the generated fluorescence spectrum (FS) in diluted oil. The spectrum classifications are performed using an ANN with three layers, each having four neurons. The approach can categorize VO and enables rapid network training with a 72% success rate utilizing only a few mathematical changes in the spectra data.
KW - Food
KW - Mathematical treatment
KW - Spectrometry
KW - Vegetable oils quality
UR - http://www.scopus.com/inward/record.url?scp=85124473146&partnerID=8YFLogxK
U2 - 10.1590/fst.80921
DO - 10.1590/fst.80921
M3 - Article
AN - SCOPUS:85124473146
SN - 0101-2061
VL - 42
JO - Food Science and Technology (Brazil)
JF - Food Science and Technology (Brazil)
M1 - e80921
ER -