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Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose

Wine quality is related to its intrinsic visual, taste, or aroma characteristics and is reflected in the price paid for that wine. One of the most important wine faults is the excessive concentration of acetic acid which can cause a wine to take on vinegar aromas and reduce its varietal character. T...

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Autores principales: Macías, Miguel Macías, Manso, Antonio García, Orellana, Carlos Javier García, Velasco, Horacio Manuel González, Caballero, Ramón Gallardo, Chamizo, Juan Carlos Peguero
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3574674/
https://www.ncbi.nlm.nih.gov/pubmed/23262483
http://dx.doi.org/10.3390/s130100208
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author Macías, Miguel Macías
Manso, Antonio García
Orellana, Carlos Javier García
Velasco, Horacio Manuel González
Caballero, Ramón Gallardo
Chamizo, Juan Carlos Peguero
author_facet Macías, Miguel Macías
Manso, Antonio García
Orellana, Carlos Javier García
Velasco, Horacio Manuel González
Caballero, Ramón Gallardo
Chamizo, Juan Carlos Peguero
author_sort Macías, Miguel Macías
collection PubMed
description Wine quality is related to its intrinsic visual, taste, or aroma characteristics and is reflected in the price paid for that wine. One of the most important wine faults is the excessive concentration of acetic acid which can cause a wine to take on vinegar aromas and reduce its varietal character. Thereby it is very important for the wine industry to have methods, like electronic noses, for real-time monitoring the excessive concentration of acetic acid in wines. However, aroma characterization of alcoholic beverages with sensor array electronic noses is a difficult challenge due to the masking effect of ethanol. In this work, in order to detect the presence of acetic acid in synthetic wine samples (aqueous ethanol solution at 10% v/v) we use a detection unit which consists of a commercial electronic nose and a HSS32 auto sampler, in combination with a neural network classifier (MLP). To find the characteristic vector representative of the sample that we want to classify, first we select the sensors, and the section of the sensors response curves, where the probability of detecting the presence of acetic acid will be higher, and then we apply Principal Component Analysis (PCA) such that each sensor response curve is represented by the coefficients of its first principal components. Results show that the PEN3 electronic nose is able to detect and discriminate wine samples doped with acetic acid in concentrations equal or greater than 2 g/L.
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spelling pubmed-35746742013-02-25 Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose Macías, Miguel Macías Manso, Antonio García Orellana, Carlos Javier García Velasco, Horacio Manuel González Caballero, Ramón Gallardo Chamizo, Juan Carlos Peguero Sensors (Basel) Article Wine quality is related to its intrinsic visual, taste, or aroma characteristics and is reflected in the price paid for that wine. One of the most important wine faults is the excessive concentration of acetic acid which can cause a wine to take on vinegar aromas and reduce its varietal character. Thereby it is very important for the wine industry to have methods, like electronic noses, for real-time monitoring the excessive concentration of acetic acid in wines. However, aroma characterization of alcoholic beverages with sensor array electronic noses is a difficult challenge due to the masking effect of ethanol. In this work, in order to detect the presence of acetic acid in synthetic wine samples (aqueous ethanol solution at 10% v/v) we use a detection unit which consists of a commercial electronic nose and a HSS32 auto sampler, in combination with a neural network classifier (MLP). To find the characteristic vector representative of the sample that we want to classify, first we select the sensors, and the section of the sensors response curves, where the probability of detecting the presence of acetic acid will be higher, and then we apply Principal Component Analysis (PCA) such that each sensor response curve is represented by the coefficients of its first principal components. Results show that the PEN3 electronic nose is able to detect and discriminate wine samples doped with acetic acid in concentrations equal or greater than 2 g/L. MDPI 2012-12-24 /pmc/articles/PMC3574674/ /pubmed/23262483 http://dx.doi.org/10.3390/s130100208 Text en © 2013 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Article
Macías, Miguel Macías
Manso, Antonio García
Orellana, Carlos Javier García
Velasco, Horacio Manuel González
Caballero, Ramón Gallardo
Chamizo, Juan Carlos Peguero
Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title_full Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title_fullStr Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title_full_unstemmed Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title_short Acetic Acid Detection Threshold in Synthetic Wine Samples of a Portable Electronic Nose
title_sort acetic acid detection threshold in synthetic wine samples of a portable electronic nose
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3574674/
https://www.ncbi.nlm.nih.gov/pubmed/23262483
http://dx.doi.org/10.3390/s130100208
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