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Fusing 1H NMR and Raman experimental data for the improvement of wine recognition models

Ariana Raluca Hategan, Maria David, Adrian Pı̂rnău, Bogdan Ionuţ Cozar, Simona Cîntă Pînzaru, F. Guyon, Dana Alina Măgdaş

2024Food Chemistry16 citationsDOIOpen Access PDF

Abstract

The present study proposes the development of new wine recognition models based on Artificial Intelligence (AI) applied to the mid-level data fusion of 1H NMR and Raman data. In this regard, a supervised machine learning method, namely Support Vector Machines (SVMs), was applied for classifying wine samples with respect to the cultivar, vintage, and geographical origin. Because the association between the two data sources generated an input space with a high dimensionality, a feature selection algorithm was employed to identify the most relevant discriminant markers for each wine classification criterion, before SVM modeling. The proposed data processing strategy allowed the classification of the wine sample set with accuracies up to 100% in both cross-validation and on an independent test set and highlighted the efficiency of 1H NMR and Raman data fusion as opposed to the use of a single-source data for differentiating wine concerning the cultivar and vintage.

Topics & Concepts

WineVintageArtificial intelligenceSupport vector machinePattern recognition (psychology)Data setFeature selectionComputer scienceCurse of dimensionalityDimensionality reductionMachine learningTest setLinear discriminant analysisData miningMathematicsChemistryFood scienceBiochemistrySpectroscopy and Chemometric AnalysesMetabolomics and Mass Spectrometry StudiesAdvanced Chemical Sensor Technologies
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