机器学习支持阿拉比卡咖啡的地理来源追溯

E. A. N. Fernandes, G. A. Sarriés, Yuniel T. Mazola, Robson C. de Lima, Gustavo N. Furlan, M. Bacchi
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引用次数: 6

摘要

咖啡的种类、品种和地理来源直接影响咖啡豆的特性,从而影响饮料的质量。这些特性为产品带来的附加经济价值促进了非指定工具用于身份验证目的的使用。在这项工作中,利用质量属性和监督机器学习算法(多层感知器(MLP)、随机森林(RF)、随机树(RT)和顺序最小优化(SMO)),研究了按原产国实施阿拉比卡咖啡可追溯系统的可行性。我们使用一个现有的数据库,其中包含15个国家生产的咖啡豆的质量参数,包括最大的出口国和进口国。总的来说,埃塞俄比亚、肯尼亚和乌干达的咖啡质量指数(总杯分)最高。使用罗布斯塔多元数据科学(Robusta Multivariate Data Science)的原始数据发现了国家之间的差异,其置信度为99%,使用Bootstrapping重采样方法和监督机器学习算法的准确率为98%。采用射频法得到的模型具有最佳的分类精度。根据原产国区分阿拉比卡咖啡的最重要属性,按降序排列是:体度、水分、总杯分、铜分、酸度、回味、风味、香气、平衡、甜味和均匀性。咖啡品种被证明是一个有希望提高准确性的变量,可以将其纳入咖啡豆分类和分级的质量属性中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning to support geographical origin traceability of Coffea Arabica
The species, variety and geographic origin of coffee directly influence the characteristics of the coffee beans and, consequently, the quality of the beverage. The added economic value that these features bring to the product has boosted the use of non-designative tools for authentication purposes. In this work, the feasibility of implementing a traceability system for Arabica coffee by country of origin was investigated using quality attributes and supervised machine learning algorithms: Multilayer Perceptron (MLP), Random Forest (RF), Random Tree (RT) and Sequential Minimal Optimization (SMO). We use an available database containing quality parameters for coffee beans produced in 15 countries, including the largest exporters and importers. Overall, Ethiopia, Kenya and Uganda had the highest coffee quality index (Total Cup Points). Differences between countries were found with 99% confidence using Robusta Multivariate Data Science with original data and 98% accuracy using Bootstrapping resampling method and Supervised Machine Learning algorithms. The model obtained by RF provided the best classification accuracy. The most important attributes to discriminate Arabica coffee by country of origin, in descending order, were body, moisture, total cup points, cupper points, acidity, aftertaste, flavor, aroma, balance, sweetness and uniformity. The coffee variety proved to be a promising variable to increase accuracy and can be incorporated among the quality attributes for classification and grading of coffee beans.
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