4.5 Article

Multi-Sensor Characterization of Sparkling Wines Based on Data Fusion

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CHEMOSENSORS
卷 9, 期 8, 页码 -

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MDPI
DOI: 10.3390/chemosensors9080200

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data fusion; multi-parametric matrix; phenolic compounds; organic acids; sparkling cava wines; grape varieties; wine-making process; chemometric methods

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This study focused on using a multi-sensor approach to assess the characteristics of sparkling wines, showing that low-level data fusion from multiple sensors can provide a more comprehensive and accurate view of the results. Analysis revealed that phenolic compounds were dependent on varietal and blending issues, while organic acids were more influenced by fermentation features. The study identified organic acids and phenolic compounds as key descriptors for distinguishing different types of cava wines based on varietal, blending, and oenological factors.
This paper is focused on the assessment of a multi-sensor approach to improve the overall characterization of sparkling wines (cava wines). Multi-sensor, low-level data fusion can provide more comprehensive and more accurate vision of results compared with the study of simpler data sets from individual techniques. Data from different instrumental platforms were combined in an enriched matrix, integrating information from spectroscopic (UV/Vis and FTIR), chromatographic, and other techniques. Sparkling wines belonging to different classes, which differed in the grape varieties, coupages, and wine-making processes, were analyzed to determine organic acids (e.g., tartaric, lactic, malic, and acetic acids), pH, total acidity, polyphenols, total antioxidant capacity, ethanol, or reducing sugars. The resulting compositional values were treated chemometrically for a more efficient recovery of the underlaying information. In this regard, exploratory methods such as principal component analysis showed that phenolic compounds were dependent on varietal and blending issues while organic acids were more affected by fermentation features. The analysis of the multi-sensor data set provided a more comprehensive description of cavas according to grape classes, blends, and vinification processes. Hierarchical Cluster Analysis (HCA) allowed specific groups of samples to be distinguished, featuring malolactic fermentation and the chardonnay and red grape classes. Partial Least Squares-Discriminant Analysis (PLS-DA) also classified samples according to the type of grape varieties and fermentations. Bar charts and complementary statistic test were performed to better define the differences among the studied samples based on the most significant markers of each cava wine type. As a conclusion, catechin, gallic, gentisic, caftaric, caffeic, malic, and lactic acids were the most remarkable descriptors that contributed to their discrimination based on varietal, blending, and oenological factors.

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