Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming

This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization, and a scaled conjugate gradient algorithm as training algorithms for an artificial neural network (ANN) predictively modeling the rate of CO and H2 production by methane dry reforming over a Co/Pr2O3...

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Main Authors: Ayodele, B.V., Mustapa, S.I., Alsaffar, M.A., Cheng, C.K.
Format: Article
Language:English
Published: 2020
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spelling my.uniten.dspace-128692020-07-07T06:23:52Z Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming Ayodele, B.V. Mustapa, S.I. Alsaffar, M.A. Cheng, C.K. This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization, and a scaled conjugate gradient algorithm as training algorithms for an artificial neural network (ANN) predictively modeling the rate of CO and H2 production by methane dry reforming over a Co/Pr2O3 catalyst. The dataset employed for the ANN modeling was obtained using a central composite experimental design. The input parameters consisted of CH4 partial pressure, CO2 partial pressure, and reaction temperature, while the target parameters included the rate of CO and H2 production. A neural network architecture of 3 13 2, 3 15 2, and 3 15 2 representing the input layer, hidden neuron layer, and target (output) layer were employed for the Leven–Marquardt, Bayesian regularization, and scaled conjugate gradient training algorithms, respectively. The ANN training with each of the algorithms resulted in an accurate prediction of the rate of CO and H2 production. The best prediction was, however, obtained using the Bayesian regularization algorithm with the lowest standard error of estimates (SEE). The high values of coefficient of determination (R2 > 0.9) obtained from the parity plots are an indication that the predicted rates of CO and H2 production were strongly correlated with the observed values. © 2019 by the authors. Licensee MDPI, Basel, Switzerland. 2020-02-03T03:27:27Z 2020-02-03T03:27:27Z 2019 Article 10.3390/catal9090738 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization, and a scaled conjugate gradient algorithm as training algorithms for an artificial neural network (ANN) predictively modeling the rate of CO and H2 production by methane dry reforming over a Co/Pr2O3 catalyst. The dataset employed for the ANN modeling was obtained using a central composite experimental design. The input parameters consisted of CH4 partial pressure, CO2 partial pressure, and reaction temperature, while the target parameters included the rate of CO and H2 production. A neural network architecture of 3 13 2, 3 15 2, and 3 15 2 representing the input layer, hidden neuron layer, and target (output) layer were employed for the Leven–Marquardt, Bayesian regularization, and scaled conjugate gradient training algorithms, respectively. The ANN training with each of the algorithms resulted in an accurate prediction of the rate of CO and H2 production. The best prediction was, however, obtained using the Bayesian regularization algorithm with the lowest standard error of estimates (SEE). The high values of coefficient of determination (R2 > 0.9) obtained from the parity plots are an indication that the predicted rates of CO and H2 production were strongly correlated with the observed values. © 2019 by the authors. Licensee MDPI, Basel, Switzerland.
format Article
author Ayodele, B.V.
Mustapa, S.I.
Alsaffar, M.A.
Cheng, C.K.
spellingShingle Ayodele, B.V.
Mustapa, S.I.
Alsaffar, M.A.
Cheng, C.K.
Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
author_facet Ayodele, B.V.
Mustapa, S.I.
Alsaffar, M.A.
Cheng, C.K.
author_sort Ayodele, B.V.
title Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
title_short Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
title_full Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
title_fullStr Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
title_full_unstemmed Artificial intelligence modelling approach for the prediction of CO-rich hydrogen production rate from methane dry reforming
title_sort artificial intelligence modelling approach for the prediction of co-rich hydrogen production rate from methane dry reforming
publishDate 2020
_version_ 1672614185238790144
score 13.214268