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

机译:便携式电子鼻合成酒样品中的乙酸检测阈值

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摘要

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.
机译:葡萄酒的质量与其内在的视觉,味道或香气特性有关,并反映在该葡萄酒的价格中。葡萄酒最重要的缺陷之一是乙酸浓度过高,可能导致葡萄酒呈现醋味并降低其品种特性。因此,对于葡萄酒行业来说,采用诸如电子鼻之类的方法来实时监控葡萄酒中乙酸过量的方法非常重要。然而,由于乙醇的掩盖作用,具有传感器阵列电子鼻的酒精饮料的香气表征是一个困难的挑战。在这项工作中,为了检测合成酒样品(10%v / v的乙醇水溶液)中乙酸的存在,我们使用了由商用电子鼻和HSS32自动进样器组成的检测单元,并结合了神经网络分类器(MLP)。为了找到代表我们要分类样品的特征向量,首先选择传感器,然后选择传感器响应曲线的一部分,在该部分中检测到乙酸的可能性会更高,然后应用主成分分析(PCA),以使每个传感器响应曲线都由其第一主成分的系数表示。结果表明,PEN3电子鼻能够检测和区分浓度等于或大于2 g / L的醋酸酒样品。

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