Multiparametric analysis and authentication of Argentinian vinegars from spectral sources

被引:1
作者
Wagner, Marcelo [1 ,2 ]
Heredia, Jorgelina Zaldarriaga [1 ,3 ]
Montemerlo, Antonella [4 ]
Ortiz, Daniela [5 ]
Camina, Jose M. [1 ,2 ]
Garrido, Mariano [6 ]
Azcarate, Silvana M. [1 ,2 ,7 ]
机构
[1] Univ Nacl La Pampa, Fac Ciencias Exactas & Nat, RA-6300 Santa Rosa, La Pampa, Argentina
[2] Inst Ciencias Tierra & Ambientales La Pampa, CONICET, RA-6300 Santa Rosa, La Pampa, Argentina
[3] Univ Nacl Litoral, LADAQ, CONICET, FBCB, RA-3000 Santa Fe, Argentina
[4] UNSL, Inst Quim San Luis, CONICET, Dr Roberto A Olsina INQUISAL, RA-5700 San Luis, Argentina
[5] Inst Nacl Tecnol Agr, EEA Anguil, RA-6326 Anguil, La Pampa, Argentina
[6] Univ Nacl Sur UNS, Dept Quim, INQUISUR, CONICET, Av Alem 1253, RA-8000 Bahia Blanca, Argentina
[7] UNLPam, Inst Ciencias Tierra & Ambientales La Pampa, INCITAP, CONICET, Mendoza 109 L6302EPA, RA-6300 Santa Rosa, La Pampa, Argentina
关键词
Wine Vinegars; Balsamic Vinegars; Spectralprint techniques; Multiparametric Analysis; Quality Control; Authenticity; Chemometrics; NEAR-INFRARED SPECTROSCOPY; BALSAMIC VINEGARS; CHEMOMETRICS;
D O I
10.1016/j.jfca.2023.105801
中图分类号
O69 [应用化学];
学科分类号
081704 ;
摘要
Ultraviolet-visible (UV-Vis) and near infrared (NIR) spectroscopies allied to chemometrics were investigated for quality control and authentication of Argentinean wine and balsamic vinegars. First, a multiparametric approach was conducted to acquire predictive models by using partial least squares regression (PLS) to quantify total acidity, volatile acidity, fixed acidity, pH and total polyphenols that are the main quality parameters used to control products. Individual UV-Vis and NIR sensors as well as merged data were assessed. Reliability models with correlation coefficients higher than 0.99 and prediction error lesser than 2.2 were acquired for the UV-Vis data. Furthermore, a classification approach was performed on wine vinegar samples to classify them according to their acetification process. At first, the data provided by each individual sensor (UV-Vis and NIR) were separately analyzed by PLS-discriminant analysis. Then, datasets were jointly analyzed by applying sequential and orthogonalized PLS coupled with linear discriminant analysis (SO-PLS-LDA). The overall accuracy of the fused model reached an optimal performance with a value of 0.92 in the prediction stage. Finally, according to the analysis proposed, this work reveals when it is proper to conduct a data fusion methodology.
引用
收藏
页数:12
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