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Application of Ultraviolet-Visible Absorption Spectroscopy with Machine Learning Techniques for the Classification of Cretan Wines

机译:紫外线可见吸收光谱在机器学习技术中的应用克里特坦葡萄酒分类

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摘要

The present study was aimed at the identification, differentiation and characterization of red and white Cretan wines, which are described with Protected Geographical Indication (PGI), using ultraviolet–visible absorption spectroscopy. Specifically, the grape variety, the wine aging process and the role of barrel/container type were investigated. The combination of spectroscopic results with machine learning-based modelling demonstrated the use of absorption spectroscopy as a facile and low-cost technique in wine analysis. In this study, a clear discrimination among grape varieties was revealed. Moreover, a grouping of samples according to aging period and container type of maturation was accomplished, for the first time.
机译:本研究旨在鉴定,使用紫外线可见吸收光谱对红色和白氯丁葡萄酒的鉴定,分化和表征,其用保护的地理指示(PGI)描述。具体地,研究了葡萄品种,葡萄酒衰老过程和桶/容器类型的作用。基于机器学习的模型的光谱结果的组合证明了在葡萄酒分析中使用吸收光谱作为容易和低成本技术。在这项研究中,揭示了葡萄品种的明显歧视。此外,首次完成根据老化周期和容器类型的成熟的样品分组。

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