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首页> 外文期刊>Journal of the Serbian Chemical Society >Identification of phenolic and alcoholic compounds in wine spirits and their classification by use of multivariate analysis
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Identification of phenolic and alcoholic compounds in wine spirits and their classification by use of multivariate analysis

机译:利用多变量分析鉴定葡萄酒精神和酚类化合物及其分类的鉴定

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During the ageing period wine spirits are changing their color, chemical composition and sensory characteristics. These changes should be simply monitored. The aim of this study was to develop partial least squares regression (PLS) models for higher alcohols and phenols in wine spirits as well as to show the feasibility of the NIR spectroscopy combined with chemometric tools to distinguish wine spirits and brandies with different ageing degree. To get the reference values, the usual methods for the analysis of spirits drinks were used. Ethanol, esters, acids, methanol and higher alcohols were studied. Wine spirits and brandies phenol composition was determined by liquid chromatography. Principal component analysis (PCA) was used to classify the wine spirits and brandies according to their phenolic and higher alcohols composition. Moreover, the Partial least squares regression (PLS regression) was used to calibrate and predict expected contents of higher alcohols and phenols in the wine spirits. Success of the classification of samples by ageing based on individual alcohols was 93.8 %, while success of the classification based on individual phenols raised to 100 %. This efficiency of the prediction was evaluated by use of linear discriminator analysis (LDA).
机译:在老化时期,葡萄酒烈酒正在改变它们的颜色,化学成分和感官特性。应简单地监控这些更改。本研究的目的是开发用于葡萄酒精神的较高醇和酚的部分最小二乘回归(PLS)模型,并表明NIR光谱与化学计量工具联合的可行性,以区分葡萄酒烈酒和具有不同老化程度的品牌。为了获得参考值,使用了分析烈酒饮料的通常方法。研究了乙醇,酯,酸,甲醇和高级醇。通过液相色谱法测定葡萄酒烈酒和品种苯酚组合物。主要成分分析(PCA)根据酚类和更高的醇组成来分类葡萄酒烈酒和品种。此外,部分最小二乘回归(PLS回归)用于校准并预测葡萄酒精神中更高醇和酚的预期含量。基于个体醇的老化对样品分类的成功为93.8%,而基于募集到100%的单个酚类的分类成功。通过使用线性鉴别器分析(LDA)评估预测的这种效率。

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