果子狸咖啡的可见光谱鉴别

Graciella Mae L. Adier, C. A. Reyes, Edwin R. Arboleda
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引用次数: 1

摘要

果子狸咖啡被认为是非常有市场和稀有的。与普通咖啡相比,这种特色咖啡风味独特,价格更高,而且供应有限。建立一种简单有效的方法来区分麝香猫咖啡的质量;同样,保护消费者也是至关重要的。这项研究利用可见光谱作为一种非破坏性的快速技术来获得果子狸咖啡和非果子狸咖啡样品在450 nm至650 nm范围内的吸光度。总共分析了160个样本,累积的总光谱为960个。从前120个样本收集的数据被馈送到分类学习器应用程序,并被用作训练数据集。剩余的样本用于测试分类算法。研究表明,果子狸咖啡豆样品在可见光谱中的吸光度值低于非果子狸咖啡咖啡豆样品。该过程为二次判别分析和逻辑回归产生96.7%至100%的分类分数。在两种分类算法中,逻辑回归产生了14.050秒的最快训练时间。可见光谱与数据挖掘算法相结合的应用可以有效地区分麝香猫咖啡和非麝香猫咖啡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrimination of civet coffee using visible spectroscopy
Civet coffee is considered as highly marketable and rare. This specialty coffee has a special flavor and higher price relative to regular coffee, and it is restricted in supply. Establishing a straightforward and efficient approach to distinguish civet coffee for quality; likewise, consumer protection is fundamental. This study utilized visible spectroscopy as a non-destructive and quick technique to obtain the absorbance, ranging from 450 nm to 650 nm, of the civet coffee and non-civet coffee samples. Overall, 160 samples were analyzed, and the total spectra accumulated was 960. The data gathered from the first 120 samples were fed to the classification learner application and were used as a training data set. The remaining samples were used for testing the classification algorithm. The study shows that civet coffee bean samples have lower absorbance values in visible spectra than non-civet coffee bean samples. The process yields 96.7 % to 100 % classification scores for quadratic discriminant analysis and logistic regression. Among the two classification algorithms, logistic regression generated the fastest training time of 14.050 seconds. The application of visible spectroscopy combined with data mining algorithms is effective in discriminating civet coffee from non-civet coffee.
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