Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties

The determination of the sensorial quality of wines is of great interest for wine consumers and producers since it declares the quality in most of the cases. The sensorial assays carried out by a group of experts are time-consuming and expensive especially when dealing with large batches of wines. T...

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Main Authors: Bednárová Adriána, Kranvogl Roman, Brodnjak-Vončina Darinka, Jug Tjaša
Format: Article
Language:English
Published: Sciendo 2014-12-01
Series:Nova Biotechnologica et Chimica
Subjects:
Online Access:http://www.degruyter.com/view/j/nbec.2014.13.issue-2/nbec-2015-0008/nbec-2015-0008.xml?format=INT
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spelling doaj-1075fa0ceb504b028a8722ae0ebcc63c2020-11-25T01:51:03ZengSciendoNova Biotechnologica et Chimica1338-69052014-12-0113218219610.1515/nbec-2015-0008nbec-2015-0008Prediction of Wine Sensorial Quality by Routinely Measured Chemical PropertiesBednárová Adriána0Kranvogl Roman1Brodnjak-Vončina Darinka2Jug Tjaša3Department of Chemistry, Faculty of Natural Sciences, University of SS Cyril and Methodius in Trnava, Nám. J. Herdu 2, Trnava, SK-917 01, Slovak RepublicFaculty of Chemistry and Chemical Engineering, University of Maribor, Smetanova 17, 2000 Maribor, SloveniaFaculty of Chemistry and Chemical Engineering, University of Maribor, Smetanova 17, 2000 Maribor, SloveniaChamber of Agriculture and Forestry of Slovenia, Institute for Agriculture and Forestry, Pri hrastu 18, 5000 Nova Gorica, SloveniaThe determination of the sensorial quality of wines is of great interest for wine consumers and producers since it declares the quality in most of the cases. The sensorial assays carried out by a group of experts are time-consuming and expensive especially when dealing with large batches of wines. Therefore, an attempt was made to assess the possibility of estimating the wine sensorial quality with using routinely measured chemical descriptors as predictors. For this purpose, 131 Slovenian red wine samples of different varieties and years of production were analysed and correlation and principal component analysis were applied to find inter-relations between the studied oenological descriptors. The method of artificial neural networks (ANNs) was utilised as the prediction tool for estimating overall sensorial quality of red wines. Each model was rigorously validated and sensitivity analysis was applied as a method for selecting the most important predictors. Consequently, acceptable results were obtained, when data representing only one year of production were included in the analysis. In this case, the coefficient of determination (R2) associated with training data was 0.95 and that for validation data was 0.90. When estimating sensorial quality in categorical form, 94 % and 85 % of correctly classified samples were achieved for training and validation subset, respectively.http://www.degruyter.com/view/j/nbec.2014.13.issue-2/nbec-2015-0008/nbec-2015-0008.xml?format=INToverall sensorial qualitypredictionSlovenian wineartificial neural networksmultivariate data analysis
collection DOAJ
language English
format Article
sources DOAJ
author Bednárová Adriána
Kranvogl Roman
Brodnjak-Vončina Darinka
Jug Tjaša
spellingShingle Bednárová Adriána
Kranvogl Roman
Brodnjak-Vončina Darinka
Jug Tjaša
Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
Nova Biotechnologica et Chimica
overall sensorial quality
prediction
Slovenian wine
artificial neural networks
multivariate data analysis
author_facet Bednárová Adriána
Kranvogl Roman
Brodnjak-Vončina Darinka
Jug Tjaša
author_sort Bednárová Adriána
title Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
title_short Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
title_full Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
title_fullStr Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
title_full_unstemmed Prediction of Wine Sensorial Quality by Routinely Measured Chemical Properties
title_sort prediction of wine sensorial quality by routinely measured chemical properties
publisher Sciendo
series Nova Biotechnologica et Chimica
issn 1338-6905
publishDate 2014-12-01
description The determination of the sensorial quality of wines is of great interest for wine consumers and producers since it declares the quality in most of the cases. The sensorial assays carried out by a group of experts are time-consuming and expensive especially when dealing with large batches of wines. Therefore, an attempt was made to assess the possibility of estimating the wine sensorial quality with using routinely measured chemical descriptors as predictors. For this purpose, 131 Slovenian red wine samples of different varieties and years of production were analysed and correlation and principal component analysis were applied to find inter-relations between the studied oenological descriptors. The method of artificial neural networks (ANNs) was utilised as the prediction tool for estimating overall sensorial quality of red wines. Each model was rigorously validated and sensitivity analysis was applied as a method for selecting the most important predictors. Consequently, acceptable results were obtained, when data representing only one year of production were included in the analysis. In this case, the coefficient of determination (R2) associated with training data was 0.95 and that for validation data was 0.90. When estimating sensorial quality in categorical form, 94 % and 85 % of correctly classified samples were achieved for training and validation subset, respectively.
topic overall sensorial quality
prediction
Slovenian wine
artificial neural networks
multivariate data analysis
url http://www.degruyter.com/view/j/nbec.2014.13.issue-2/nbec-2015-0008/nbec-2015-0008.xml?format=INT
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