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Detection of abnormal processes of wine fermentation by support vector machines

机译:用支持向量机检测葡萄酒发酵的异常过程

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摘要

The early detection of problematic fermentations is one of the main problems that appear in winemaking processes, due to the significant impacts in wine quality and utility. This situation is specially important in Chile because is one of the top ten wine production countries. In last years, different methods coming from Multivariate Statistics and Computational Intelligence have been applied to solve this problem. In this work we detect normal and problematic (sluggish and stuck) wine fermentations applying the support vector machine method with three different kernels: linear, polynomial and radial basis function. For the training algorithm, we use the same database of 22 wine fermentation studied in [1, 2] that contains approximately 22,000 points, considering the main chemical variables measured in this kind of processes: total sugar, alcoholic degree and density. Our main result establishes that the SVM method with third degree polynomial and radial basis kernels predict correctly 88 and 85 % respectively. The fermentation behavior results have been obtained for a 80-20 % training/testing percentage configuration and a time cutoff of 48 h.
机译:由于对葡萄酒质量和实用性的重大影响,早期发现有问题的发酵是酿酒过程中出现的主要问题之一。这种情况在智利特别重要,因为它是十大葡萄酒生产国之一。近年来,来自多元统计和计算智能的不同方法已被用来解决此问题。在这项工作中,我们使用具有三个不同核的支持向量机方法检测正常和有问题的(缓慢和停滞的)葡萄酒发酵:线性,多项式和径向基函数。对于训练算法,考虑到在这种过程中测得的主要化学变量:总糖,酒精度和密度,我们使用在[1,2]中研究的包含22个葡萄酒点的22个葡萄酒发酵相同的数据库。我们的主要结果表明,具有三阶多项式和径向基核的SVM方法分别可以正确预测88%和85%。对于80%至20%的训练/测试百分比配置和48小时的截止时间,已经获得了发酵行为结果。

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