Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield

Process performance of coking plants are based on data on the yield of by-products of coking coal and their quality, therefore, much attention is paid to the issues of their analysis. In view of the complexity and insufficient knowledge of the relationship between these parameters, mathematical mode...

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Main Authors: Vasileva Yelena, Nevedrov Aleksandr, Subbotin Sergey
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/34/e3sconf_iims2020_03023.pdf
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spelling doaj-77088bd5782346dda35700b73233b0b32021-04-02T14:31:08ZengEDP SciencesE3S Web of Conferences2267-12422020-01-011740302310.1051/e3sconf/202017403023e3sconf_iims2020_03023Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product YieldVasileva Yelena0Nevedrov Aleksandr1Subbotin SergeyT.F. Gorbachev Kuzbass State Technical UniversityT.F. Gorbachev Kuzbass State Technical UniversityProcess performance of coking plants are based on data on the yield of by-products of coking coal and their quality, therefore, much attention is paid to the issues of their analysis. In view of the complexity and insufficient knowledge of the relationship between these parameters, mathematical modeling of this dependence using neural networks is of great interest. Based on a mathematical analysis of experimental data on the quality indicators of coal, coal concentrates and the by-product yield, neural network mathematical models have been developed to forecast the parameters under study. The neural network is based on the Ward’s network. Based on the results of the research, the application “Intelligent Information System for Forecasting By-product Yield” was created, which implements neural networks [1]. The relative forecasting error for the parameter “coke” is 0.64±0.23%, “coal tar” is 19.53±5.25%, “crude benzene” is 10.02±2.83%, and “coke gas” is 5.11±1.34%. A comparative analysis of the data obtained using the developed design method is carried out, with the simulation results using existing methods, as well as with the production values of by-products yield.https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/34/e3sconf_iims2020_03023.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Vasileva Yelena
Nevedrov Aleksandr
Subbotin Sergey
spellingShingle Vasileva Yelena
Nevedrov Aleksandr
Subbotin Sergey
Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
E3S Web of Conferences
author_facet Vasileva Yelena
Nevedrov Aleksandr
Subbotin Sergey
author_sort Vasileva Yelena
title Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
title_short Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
title_full Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
title_fullStr Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
title_full_unstemmed Development and Performance Evaluation of a Computer Program Based on Neural Network Mathematical Models for Forecasting By- Product Yield
title_sort development and performance evaluation of a computer program based on neural network mathematical models for forecasting by- product yield
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description Process performance of coking plants are based on data on the yield of by-products of coking coal and their quality, therefore, much attention is paid to the issues of their analysis. In view of the complexity and insufficient knowledge of the relationship between these parameters, mathematical modeling of this dependence using neural networks is of great interest. Based on a mathematical analysis of experimental data on the quality indicators of coal, coal concentrates and the by-product yield, neural network mathematical models have been developed to forecast the parameters under study. The neural network is based on the Ward’s network. Based on the results of the research, the application “Intelligent Information System for Forecasting By-product Yield” was created, which implements neural networks [1]. The relative forecasting error for the parameter “coke” is 0.64±0.23%, “coal tar” is 19.53±5.25%, “crude benzene” is 10.02±2.83%, and “coke gas” is 5.11±1.34%. A comparative analysis of the data obtained using the developed design method is carried out, with the simulation results using existing methods, as well as with the production values of by-products yield.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/34/e3sconf_iims2020_03023.pdf
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AT subbotinsergey developmentandperformanceevaluationofacomputerprogrambasedonneuralnetworkmathematicalmodelsforforecastingbyproductyield
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