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Characterization and classification of wines according to geographical origin, vintage and specific variety based on elemental content: a new chemometric approach.


ABSTRACT: A highly informative chemometric approach using elemental data to distinguish and classify wine samples according to different criteria was successfully developed. The robust chemometric methods, such fuzzy principal component analysis (FPCA), FPCA combined with linear discriminant analysis (LDA), namely FPCA-LDA and mainly fuzzy divisive hierarchical associative-clustering (FDHAC), including also classical methods (HCA, PCA and PCA-LDA) were efficaciously applied for characterization and classification of white wines according to the geographical origin, vintage or specific variety. The correct rate of classification applying LDA was 100% in all cases, but more compact groups have been obtained for FPCA scores. A similar separation of samples resulted also when the FDHAC was employed. In addition, FDHAC offers an excellent possibility to associate each fuzzy partition of wine samples to a fuzzy set of specific characteristics, finding in this way very specific elemental contents and fuzzy markers according to the degrees of membership (DOMs).

SUBMITTER: Feher I 

PROVIDER: S-EPMC6838274 | biostudies-literature | 2019 Dec

REPOSITORIES: biostudies-literature

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Characterization and classification of wines according to geographical origin, vintage and specific variety based on elemental content: a new chemometric approach.

Feher Ioana I   Magdas Dana Alina DA   Dehelean Adriana A   Sârbu Costel C  

Journal of food science and technology 20190805 12


A highly informative chemometric approach using elemental data to distinguish and classify wine samples according to different criteria was successfully developed. The robust chemometric methods, such fuzzy principal component analysis (FPCA), FPCA combined with linear discriminant analysis (LDA), namely FPCA-LDA and mainly fuzzy divisive hierarchical associative-clustering (FDHAC), including also classical methods (HCA, PCA and PCA-LDA) were efficaciously applied for characterization and classi  ...[more]

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