Determination of the Wine Variety and Geographical Origin of White Wines Using Neural Network Technologies


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Аннотация

In order to determine the geographical origin and wine variety of white wines, we studied 153 samples of the white wines Riesling (49), Chardonnay (56), and Muscat (48) produced in the territory of the main wineries of geographical zones in the Krasnodar krai. The concentrations of trace and macro elements in wines were determined by inductively coupled plasma atomic emission spectrometry. Chemometric studies were performed using the STATISTICA Neural Networks. From a set of 15 trace and macro elements determined, 5 trace elements (Fe, Mg, Rb, Ti, and Na) were recognized by correlation analysis as the predictors of a constructed neural network model, which successfully identified the brands of wines. To determine the region of grape growing, a neural network model was constructed based on six predictors: five trace elements and a specified wine brand. A software was developed to automate the computations required.

Об авторах

A. Khalafyan

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040

Z. Temerdashev

Kuban State University

Автор, ответственный за переписку.
Email: temza@kubsu.ru
Россия, Krasnodar, 350040

A. Kaunova

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040

A. Abakumov

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040

V. Titarenko

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040

V. Akin’shina

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040

E. Ivanovets

Kuban State University

Email: temza@kubsu.ru
Россия, Krasnodar, 350040


© Pleiades Publishing, Inc., 2019

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