Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact
Energy management systems can be improved by using artificial intelligence techniques such as neural networks and genetic algorithms for modelling and optimising equipment and system energy consumption. This paper proposes modelling ball mill consumption as used in the cement industry from field var...
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Universidad Nacional de Colombia
2013-09-01
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Online Access: | https://revistas.unal.edu.co/index.php/ingeinv/article/view/41043 |
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doaj-e30003b2c2104822b7cd124f628815a92020-11-25T01:12:12ZengUniversidad Nacional de ColombiaIngeniería e Investigación0120-56092248-87232013-09-01333495434647Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impactJulio R. Gómez Sarduy0José P. Monteagudo Yanes1Manuel E. Granado Rodríguez2Jorge L Quiñones Ferreira3Yudith Miranda Torres4ienfuegos UniversityCienfuegos UniversityCienfuegos UniversityCementos Cienfuegos, SACienfuegos UniversityEnergy management systems can be improved by using artificial intelligence techniques such as neural networks and genetic algorithms for modelling and optimising equipment and system energy consumption. This paper proposes modelling ball mill consumption as used in the cement industry from field variables. The regression model was based on artificial neural networks for predicting the electricity consumption of the mill’s main drive and evaluating established consumption rate performance. This research showed the influence of the amount of pozzolanic ash, gypsum and clinker on a mill’s power consumption; the dose determined according to the model ensured minimum energy consumption using a simple genetic algorithm. The estimated savings potential from the proposed dose was 36 600 kWh / year for mill number 1, representing $5,793.78 / year and a 33,708 kg CO2 / year reduction in the environmental impact of gas left to escape.https://revistas.unal.edu.co/index.php/ingeinv/article/view/41043energy managementenergycement millartificial neural network (ANN)genetic algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Julio R. Gómez Sarduy José P. Monteagudo Yanes Manuel E. Granado Rodríguez Jorge L Quiñones Ferreira Yudith Miranda Torres |
spellingShingle |
Julio R. Gómez Sarduy José P. Monteagudo Yanes Manuel E. Granado Rodríguez Jorge L Quiñones Ferreira Yudith Miranda Torres Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact Ingeniería e Investigación energy management energy cement mill artificial neural network (ANN) genetic algorithm |
author_facet |
Julio R. Gómez Sarduy José P. Monteagudo Yanes Manuel E. Granado Rodríguez Jorge L Quiñones Ferreira Yudith Miranda Torres |
author_sort |
Julio R. Gómez Sarduy |
title |
Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
title_short |
Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
title_full |
Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
title_fullStr |
Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
title_full_unstemmed |
Determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
title_sort |
determining cement ball mill dosage by artificial intelligence tools aimed at reducing energy consumption and environmental impact |
publisher |
Universidad Nacional de Colombia |
series |
Ingeniería e Investigación |
issn |
0120-5609 2248-8723 |
publishDate |
2013-09-01 |
description |
Energy management systems can be improved by using artificial intelligence techniques such as neural networks and genetic algorithms for modelling and optimising equipment and system energy consumption. This paper proposes modelling ball mill consumption as used in the cement industry from field variables. The regression model was based on artificial neural networks for predicting the electricity consumption of the mill’s main drive and evaluating established consumption rate performance. This research showed the influence of the amount of pozzolanic ash, gypsum and clinker on a mill’s power consumption; the dose determined according to the model ensured minimum energy consumption using a simple genetic algorithm. The estimated savings potential from the proposed dose was 36 600 kWh / year for mill number 1, representing $5,793.78 / year and a 33,708 kg CO2 / year reduction in the environmental impact of gas left to escape. |
topic |
energy management energy cement mill artificial neural network (ANN) genetic algorithm |
url |
https://revistas.unal.edu.co/index.php/ingeinv/article/view/41043 |
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