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首页> 外文期刊>Journal of Food Science >Assessment of Beer Quality Based on a Robotic Pourer, Computer Vision, and Machine Learning Algorithms Using Commercial Beers
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Assessment of Beer Quality Based on a Robotic Pourer, Computer Vision, and Machine Learning Algorithms Using Commercial Beers

机译:基于机器人倒酒器,计算机视觉和使用商用啤酒的机器学习算法的啤酒质量评估

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摘要

Sensory attributes of beer are directly linked to perceived foam--related parameters and beer color. The aim of this study was to develop an objective predictive model using machine learning modeling to assess the intensity levels of sensory descriptors in beer using the physical measurements of color and foam-related parameters. A robotic pourer (RoboBEER), was used to obtain 15 color and foam-related parameters from 22 different commercial beer samples. A sensory session using quantitative descriptive analysis (QDA~®) with trained panelists was conducted to assess the intensity of 10 beer descriptors. Results showed that the principal component analysis explained 64% of data variability with correlations found between foam-related descriptors from sensory and RoboBEER such as the positive and significant correlation between carbon dioxide and carbonation mouthfeel (R = 0.62), correlation of viscosity to sensory, and maximum volume of foam and total lifetime of foam (R = 0.75, R = 0.77, respectively). Using the RoboBEER parameters as inputs, an artificial neural network (ANN) regression model showed high correlation (R = 0.91) to predict the intensity levels of 10 related sensory descriptors such as yeast, grains and hops aromas, hops flavor, bitter, sour and sweet tastes, viscosity, carbonation, and astringency.
机译:啤酒的感官属性与泡沫相关参数和啤酒颜色直接相关。这项研究的目的是使用机器学习模型开发客观的预测模型,以使用颜色和泡沫相关参数的物理测量来评估啤酒中感官描述符的强度水平。使用自动倒酒器(RoboBEER)从22种不同的商业啤酒样品中获得15种颜色和泡沫相关参数。进行了由训练有素的小组成员进行的定量描述分析(QDA®)的感官会议,以评估10个啤酒描述符的强度。结果表明,主成分分析解释了64%的数据变异性,其中感觉和RoboBEER的泡沫相关描述符之间存在相关性,例如二氧化碳与碳酸化口感之间的正相关和显着相关性(R = 0.62),粘度与感觉相关性,泡沫的最大体积和泡沫的总寿命(分别为R = 0.75,R = 0.77)。使用RoboBEER参数作为输入,人工神经网络(ANN)回归模型显示出高相关性(R = 0.91),可以预测10种相关感觉指标的强度水平,如酵母,谷物和啤酒花的香气,啤酒花的味道,苦味,酸味和甜味,粘度,碳化和涩味。

著录项

  • 来源
    《Journal of Food Science》 |2018年第6期|1381-1388|共8页
  • 作者单位

    Faculty of Veterinary and Agricultural Sciences, School of Agriculture and Food, Univ. of Melbourne, VIC, 3010, Australia;

    Faculty of Veterinary and Agricultural Sciences, School of Agriculture and Food, Univ. of Melbourne, VIC, 3010, Australia;

    Faculty of Veterinary and Agricultural Sciences, School of Agriculture and Food, Univ. of Melbourne, VIC, 3010, Australia;

    Faculty of Veterinary and Agricultural Sciences, School of Agriculture and Food, Univ. of Melbourne, VIC, 3010, Australia;

    Faculty of Veterinary and Agricultural Sciences, School of Agriculture and Food, Univ. of Melbourne, VIC, 3010, Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    artificial neural networks; beer color; beer foam; robotics; sensory analysis;

    机译:人工神经网络;啤酒色;啤酒泡沫;机器人技术感官分析;

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