Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production
Experience in applying a hybrid artificial neural network (ANN)-genetic algorithm for modeling and optimizing the Hall-Heroult process for aluminum extraction is described in this study. During the stage of modeling, the most important and effective process variables including temperature and ce...
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doaj-c87129fd12554c2f8f5518ab0fd4336c2020-11-24T21:49:55ZengUniversitas IndonesiaInternational Journal of Technology2086-96142087-21002015-07-016348049110.14716/ijtech.v6i3.13691369Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum ProductionSepehr Sadighi0Reza Seif Mohaddecy1Yasser Arab Ameri2Catalytic Reaction Engineering Department, Catalysis Research Division, Research Institute of Petroleum Industry (RIPI), West Blvd., Azadi Sports Complex , P.O. Box 14665-137, Tehran , IranCatalytic Reaction Engineering Department, Catalysis Research Division, Research Institute of Petroleum Industry (RIPI), West Blvd., Azadi Sports Complex , P.O. Box 14665-137, Tehran , IranFaculties of Engineering, Shahrood branch, Islamic Azad University, Shahrood, IranExperience in applying a hybrid artificial neural network (ANN)-genetic algorithm for modeling and optimizing the Hall-Heroult process for aluminum extraction is described in this study. During the stage of modeling, the most important and effective process variables including temperature and cell voltage, metal and bath heights, purity of CaF2 and Al2O3, and bath ratio are chosen as input variables whilst outputs of the model are product purity, ampere efficiency, and product rate. During three years of operation, 19 points were selected for building and training, 7 points for testing, and 7 data points for validating the model. Results show that a feed-forward Artificial Neural Network (ANN) model with 3 neurons in the hidden layer can acceptably simulate the mentioned output variables with the Mean Squared Error (MSE) of 0.002%, 0.108% and 0.407%, respectively. Utilizing the validated model and multi-objective genetic algorithms, aluminum purity and the rate of production are maximized by manipulating decision variables. Results show that setting these decision variables at the optimal values can increase approximately the metal purity, ampere efficiency, and product rate by 0.007%, 0.185%, and 20kg/h, respectively.http://ijtech.eng.ui.ac.id/article/view/1369Aluminum production, Artificial neural network, Hall-Heroult process, Modeling, Optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sepehr Sadighi Reza Seif Mohaddecy Yasser Arab Ameri |
spellingShingle |
Sepehr Sadighi Reza Seif Mohaddecy Yasser Arab Ameri Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production International Journal of Technology Aluminum production, Artificial neural network, Hall-Heroult process, Modeling, Optimization |
author_facet |
Sepehr Sadighi Reza Seif Mohaddecy Yasser Arab Ameri |
author_sort |
Sepehr Sadighi |
title |
Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production |
title_short |
Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production |
title_full |
Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production |
title_fullStr |
Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production |
title_full_unstemmed |
Artificial Neural Network Modeling and Optimization of Hall-Heroult Process for Aluminum Production |
title_sort |
artificial neural network modeling and optimization of hall-heroult process for aluminum production |
publisher |
Universitas Indonesia |
series |
International Journal of Technology |
issn |
2086-9614 2087-2100 |
publishDate |
2015-07-01 |
description |
Experience
in applying a hybrid artificial neural network (ANN)-genetic algorithm for
modeling and optimizing the Hall-Heroult process for aluminum extraction is
described in this study. During the stage of modeling, the most important and
effective process variables including temperature and cell voltage, metal and
bath heights, purity of CaF2 and Al2O3, and
bath ratio are chosen as input variables whilst outputs of the model are product
purity, ampere efficiency, and product rate. During three years of operation,
19 points were selected for building and training, 7 points for testing, and 7
data points for validating the model. Results show that a feed-forward
Artificial Neural Network (ANN) model with 3 neurons in the hidden layer can
acceptably simulate the mentioned output variables with the Mean Squared Error
(MSE) of 0.002%, 0.108% and 0.407%, respectively. Utilizing the validated model
and multi-objective genetic algorithms, aluminum purity and the rate of
production are maximized by manipulating decision variables. Results show that
setting these decision variables at the optimal values can increase
approximately the metal purity, ampere efficiency, and product rate by 0.007%,
0.185%, and 20kg/h, respectively. |
topic |
Aluminum production, Artificial neural network, Hall-Heroult process, Modeling, Optimization |
url |
http://ijtech.eng.ui.ac.id/article/view/1369 |
work_keys_str_mv |
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