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DIFFERENTIATION OF WINE VINEGARS BASED ON PHENOLIC COMPOSITION

机译:基于酚类成分的食醋的鉴别

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摘要

Phenolic composition of 92 nine vinegars produced from different wines from the south of Spain (Jerez, Montilla, Fl Condado) is determined by HPLC with diode array detection. Pattern recognition techniques were applied to distinguish between different methods of elaboration (slow traditional methods with surface culture or quick methods carried out in bioreactors with submerged culture) or wines employed as substrate. Multivariate analysis of data includes principal component analysis, cluster analysis, and linear discriminant analysis (LDA) as well as artificial neural networks trained by back-propagation (BPANN). The classification depending on the acetification process leads to good recalling rates in both LDA (mean = 92.5) and BPANN (mean = 99.6). With respect to the classification on the basis of the geographical origin, the obtained recalling rates were 88.8 for LDA and of 96.5 for BPANN (mean values). [References: 35]
机译:通过高效液相色谱法和二极管阵列检测法确定了来自西班牙南部(赫雷斯,蒙蒂利亚,佛罗里达州康达多)不同葡萄酒酿制的92九种醋的酚类成分。模式识别技术被用于区分不同的加工方法(传统的慢速表面培养方法或在带有深层培养的生物反应器中进行的快速方法)或以葡萄酒为底物。数据的多变量分析包括主成分分析,聚类分析和线性判别分析(LDA)以及通过反向传播训练的人工神经网络(BPANN)。取决于乙酰化过程的分类可导致LDA(平均值= 92.5)和BPANN(平均值= 99.6)中良好的召回率。关于基于地理来源的分类,LDA的召回率是88.8,BPANN的召回率是96.5(平均值)。 [参考:35]

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