Recognition of Japanese Sake Quality Using Machine Learning Based Analysis of Physicochemical Properties

被引:11
作者
Saville, Ramadhona [1 ]
Kazuoka, Takayuki [2 ]
Shimoguchi, Nina N. [1 ]
Hatanaka, Katsumori [1 ]
机构
[1] Tokyo Univ Agr, Dept Agribusiness Management, Tokyo, Japan
[2] Tokyo Univ Agr, Dept Fermentat Sci, Tokyo, Japan
关键词
Artificial neural network; flavor grades; Japanese sake; machine learning; type of sake; PREDICTION; WINE;
D O I
10.1080/03610470.2021.1939973
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Rapid recognition of Japanese sake quality (flavor and types of sake) is an important factor affecting consumers' preference, quality control, as well as fraud avoidance in sake labelling. This study attempted to find a prediction model that could precisely predict sake flavor grades (Q1, Q2, and Q3) and to discover a classification model that could precisely differentiate the types of sake, specifically between Junmaishu and Honjozoshu. Twelve physicochemical properties of 407 sake were analyzed and sensory evaluation of 260 sake from 510 professional evaluators were further collected. The physicochemical properties, data, and sensory evaluation of 260 sake were utilized to predict sake flavor grades, while physicochemical properties data of 407 sake were used to classify the type of sake. Artificial neural network (ANN-including multilayer perceptron classifier-MLP classifier), random forest, support vector machine, and k-nearest neighbor were implemented to achieve the objective. ANN gained an accuracy of 91.14% and precision of Q1 87.5%, Q2 93.55% and Q3 77.78% for sake flavor grades prediction. As for types of sake classification, MLP classifier gained 100% accuracy as well as 100% precision of Junmaishu and Honjozoshu. In general, the physiochemical properties combined with ANN can recognize the quality of Japanese sake.
引用
收藏
页码:146 / 154
页数:9
相关论文
共 46 条
  • [1] Effects of Distance Measure Choice on K-Nearest Neighbor Classifier Performance: A Review
    Abu Alfeilat, Haneen Arafat
    Hassanat, Ahmad B. A.
    Lasassmeh, Omar
    Tarawneh, Ahmad S.
    Alhasanat, Mahmoud Bashir
    Salman, Hamzeh S. Eyal
    Prasath, V. B. Surya
    [J]. BIG DATA, 2019, 7 (04) : 221 - 248
  • [2] Predictive non-linear modeling of complex data by artificial neural networks
    Almeida, JS
    [J]. CURRENT OPINION IN BIOTECHNOLOGY, 2002, 13 (01) : 72 - 76
  • [3] Bangweon Song, 2016, Advances in Decision Sciences, V2016, DOI 10.1155/2016/8963214
  • [4] Electronic nose systems to study shelf life and cultivar effect on tomato aroma profile
    Berna, AZ
    Lammertyn, J
    Saevels, S
    Di Natale, C
    Nicolaï, BM
    [J]. SENSORS AND ACTUATORS B-CHEMICAL, 2004, 97 (2-3) : 324 - 333
  • [5] A random forest guided tour
    Biau, Gerard
    Scornet, Erwan
    [J]. TEST, 2016, 25 (02) : 197 - 227
  • [6] Bishop C.M., 1995, NEURAL NETWORKS PATT
  • [7] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [8] Brownlee J., 2016, MACHINE LEARNING MAS
  • [9] Brownlee J., 2018, Statistical Methods for Machine Learning
  • [10] Application of artificial neural networks to the prediction of the antioxidant activity of essential oils in two experimental in vitro models
    Cabrera, Alvaro Cortes
    Prieto, Jose M.
    [J]. FOOD CHEMISTRY, 2010, 118 (01) : 141 - 146