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Identification of chemical markers to detect abnormal wine fermentation using support vector machines

机译:使用支持向量机检测化学标记物检测异常葡萄酒发酵的鉴定

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摘要

Support Vector Machine (SVM) was explored as a tool for the early detection of abnormal fermentations, which are common in the wine industry. A database of about 18,000 data from 38 fermentations and 45 variables was used. Two cases were studied: (Ⅰ) measurements of five groups (fermentation control variables, organic acids, amino acids, saturated and unsaturated fatty acids); and (Ⅱ) four variables (density, YAN, brix and acidity). In addition, different kernels, training/testing configurations, and cut-off time were evaluated. Main results indicated that 80% of wine fermentations were well predicted using information of amino acids. In addition, density and YAN were the best individual chemical markers for prediction, with over 90% of accuracy at first 48 h of the process. Therefore, SVM can be used as a decision support tool for wine fermentation monitoring. Using data from the first 72 h, it is possible classify abnormal fermentations with high precision.
机译:支持向量机(SVM)被探索为早期检测异常发酵的工具,这在葡萄酒行业中很常见。使用来自38个发酵和45个变量的约18,000个数据的数据库。研究了两种情况:(Ⅰ)五组测量(发酵控制变量,有机酸,氨基酸,饱和和不饱和脂肪酸);和(Ⅱ)四个变量(密度,燕,Brix和酸度)。此外,还会评估不同的内核,训练/测试配置和截止时间。主要结果表明,使用氨基酸的信息,预测了80%的葡萄酒发酵。此外,密度和延长是用于预测的最佳单独的化学标志,在此过程的前48小时内具有超过90%的准确性。因此,SVM可用作葡萄酒发酵监测的决策支持工具。使用来自前72小时的数据,可以通过高精度对异常发酵进行分类。

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