EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS

The conducted regression analysis allowed us to obtain the equation of multiple nonlinear regression, which reflects the dependence of the raw gluten content in wheat kernels (Y, %) on the protein content (X1 = Ntotal · 5.7, %) and 1000-kernel weight (X2, g): Y = -41.928 + 0.081Х1 2 + 2.548Х2 - 0.02...

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Main Authors: A. V. Pasynkov, E. N. Pasynkova
Format: Article
Language:Russian
Published: Federal State Budgetary Scientific Institution “Agricultural Research Center “Donskoy”" 2019-09-01
Series:Зерновое хозяйство России
Subjects:
Online Access:https://www.zhros.online/jour/article/view/703
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author A. V. Pasynkov
E. N. Pasynkova
author_facet A. V. Pasynkov
E. N. Pasynkova
author_sort A. V. Pasynkov
collection DOAJ
description The conducted regression analysis allowed us to obtain the equation of multiple nonlinear regression, which reflects the dependence of the raw gluten content in wheat kernels (Y, %) on the protein content (X1 = Ntotal · 5.7, %) and 1000-kernel weight (X2, g): Y = -41.928 + 0.081Х1 2 + 2.548Х2 - 0.028Х2 2. In the presented equation, all quality indicators are given at 12% humidity. If protein content and/or 1000-kernel weight are determined for absolutely dry matter (a.d.m.), the developed equation to predict raw gluten content in wheat kernels is recalculated with the use of coefficients of 0.88 and 1.136, respectively. The purpose of the research is to identify the effectiveness of raw gluten content prediction in wheat kernels using the developed regression equation, which reflects its dependence on protein content and 1000-kernel weight. There have been developed and presented an algorithm and results of testing the predictive capabilities of the equation based on independent data. That is, using experimental data on protein and gluten content, and 1000-kernel weight obtained by other researchers in the experiments with different wheat varieties and in other soil and climatic conditions. The summarized experimental data of 124 Soviet, Russian and foreign literary references with a total number of observations n = 2485 on more than a hundred wheat varieties grown from 1959 to 2019 in various soil and climatic zones of the USSR, Russia and abroad have shown that the number of values beyond the limits regulated by GOST R 54478 - 2011 (± 2%) was 462 or 18.6% of the total number of observations. The accuracy of the raw gluten content prediction in wheat kernels was 81.4%. The developed equation can be used to predict raw gluten content in kernels of various winter and spring soft and durum wheat varieties.
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spelling doaj-art-ef68265e236741cb81436bc78085ab0b2025-08-20T02:53:34ZrusFederal State Budgetary Scientific Institution “Agricultural Research Center “Donskoy”"Зерновое хозяйство России2079-87252079-87332019-09-0104192610.31367/2079-8725-2019-64-4-19-26496EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELSA. V. Pasynkov0E. N. Pasynkova1FSBSI “Agrophysical Research Institute”FSBSI “Leningrad Research Institute of Agriculture “Belogorka”The conducted regression analysis allowed us to obtain the equation of multiple nonlinear regression, which reflects the dependence of the raw gluten content in wheat kernels (Y, %) on the protein content (X1 = Ntotal · 5.7, %) and 1000-kernel weight (X2, g): Y = -41.928 + 0.081Х1 2 + 2.548Х2 - 0.028Х2 2. In the presented equation, all quality indicators are given at 12% humidity. If protein content and/or 1000-kernel weight are determined for absolutely dry matter (a.d.m.), the developed equation to predict raw gluten content in wheat kernels is recalculated with the use of coefficients of 0.88 and 1.136, respectively. The purpose of the research is to identify the effectiveness of raw gluten content prediction in wheat kernels using the developed regression equation, which reflects its dependence on protein content and 1000-kernel weight. There have been developed and presented an algorithm and results of testing the predictive capabilities of the equation based on independent data. That is, using experimental data on protein and gluten content, and 1000-kernel weight obtained by other researchers in the experiments with different wheat varieties and in other soil and climatic conditions. The summarized experimental data of 124 Soviet, Russian and foreign literary references with a total number of observations n = 2485 on more than a hundred wheat varieties grown from 1959 to 2019 in various soil and climatic zones of the USSR, Russia and abroad have shown that the number of values beyond the limits regulated by GOST R 54478 - 2011 (± 2%) was 462 or 18.6% of the total number of observations. The accuracy of the raw gluten content prediction in wheat kernels was 81.4%. The developed equation can be used to predict raw gluten content in kernels of various winter and spring soft and durum wheat varieties.https://www.zhros.online/jour/article/view/703wheatprotein1000-kernel weightraw glutenmultiple regression analysisgluten content prediction
spellingShingle A. V. Pasynkov
E. N. Pasynkova
EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
Зерновое хозяйство России
wheat
protein
1000-kernel weight
raw gluten
multiple regression analysis
gluten content prediction
title EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
title_full EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
title_fullStr EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
title_full_unstemmed EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
title_short EFFICIENCY OF RAW GLUTEN CONTENT PREDICTION IN WHEAT KERNELS
title_sort efficiency of raw gluten content prediction in wheat kernels
topic wheat
protein
1000-kernel weight
raw gluten
multiple regression analysis
gluten content prediction
url https://www.zhros.online/jour/article/view/703
work_keys_str_mv AT avpasynkov efficiencyofrawglutencontentpredictioninwheatkernels
AT enpasynkova efficiencyofrawglutencontentpredictioninwheatkernels