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Application of Raman spectroscopy and Machine Learning algorithms for fruit distillates discrimination

Food Science and Technology

Application of Raman spectroscopy and Machine Learning algorithms for fruit distillates discrimination

C. Berghian-grosan and D. A. Magdas

This pilot study explores the transformative potential of combining Raman spectroscopy with Machine Learning algorithms for distinguishing between various fruit distillates based on their trademark, geographical, and botanical origins. Conducted by Camelia Berghian-Grosan and Dana Alina Magdas, the research showcases impressive accuracy rates of 95.5% for trademark differentiation and 90.9% for geographical classification in the Transylvania region.

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~3 min • Beginner • English
Abstract
Through this pilot study, the association between Raman spectroscopy and Machine Learning algorithms were used for the first time with the purpose of distillates differentiation with respect to trademark, geographical and botanical origin. Two spectral Raman ranges (region I-200-600 cm⁻¹ and region II-1200-1400 cm⁻¹) appeared to have the higher discrimination potential for the investigated distillates. The proposed approach proved to be a very effective one for trademark fingerprint differentiation, a model accuracy of 95.5% being obtained (only one sample was misclassified). A comparable model accuracy (90.9%) was achieved for the geographical discrimination of the fruit spirits which can be considered as a very good one taking into account that this classification was made inside Transylvania region, among neighbouring areas. Because the trademark fingerprint is the prevailing one, the successfully distillate type differentiation, with respect to the fruit variety, was possible to be made only inside of each producing entity.
Publisher
Scientific Reports
Published On
Dec 03, 2020
Authors
Camelia Berghian-Grosan, Dana Alina Magdas
Tags
Raman spectroscopy
Machine Learning
fruit distillates
trademark differentiation
geographical classification
Transylvania
botanical origin
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