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https://doi.org/10.15255/KUI.2019.002

Modelling of Adsorption of Methane, Nitrogen, Carbon Dioxide, Their Binary Mixtures, and Their Ternary Mixture on Activated Carbons Using Artificial Neural Network

Hadjer Barki ; Laboratory of Biomaterial and Transport Phenomena (LBMPT), University of Médéa, Alžir
Latifa Khaouane ; Laboratory of Biomaterial and Transport Phenomena (LBMPT), University of Médéa, Alžir
Salah Hanini ; Laboratory of Biomaterial and Transport Phenomena (LBMPT), University of Médéa, Alžir


Puni tekst: engleski pdf 935 Kb

str. 289-302

preuzimanja: 297

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Sažetak

This work examines the use of neural networks in modelling the adsorption process of gas mixtures (CO2, CH4, and N2) on different activated carbons. Seven feed-forward neural network models, characterized by different structures, were constructed with the aim of predicting the adsorption of gas mixtures. A set of 417, 625, 143, 87, 64, 64, and 40 data points for NN1 to NN7, respectively, were used to test the neural networks. Of the total data, 60 %, 20 %, and 20 % were used, respectively, for training, validation, and testing of the seven models. Results show a good fit between the predicted and experimental values for each model; good correlations were found (R = 0.99656 for NN1, R = 0.99284 for NN2, R = 0.99388 for NN3, R = 0.99639 for Q1 for NN4, R = 0.99472 for Q2 for NN4, R = 0.99716 for Q1 for NN5, R = 0.99752 for Q3 for NN5, R = 0.99746 for Q2 for NN6, R = 0.99783 for Q3 for NN6, R = 0.9946 for Q1 for NN7, R = 0.99089 for Q2 for NN7, and R = 0.9947 for Q3 for NN7). Moreover, the comparison between the predicted results and the classical models (Gibbs model, Generalized dual-site Langmuir model, and Ideal Adsorption Solution Theory) shows that the neural network models gave far better results.


This work is licensed under a Creative Commons Attribution 4.0 International License.

Ključne riječi

activated carbons; adsorption; gas mixture; modelling; neural network

Hrčak ID:

222487

URI

https://hrcak.srce.hr/222487

Datum izdavanja:

30.7.2019.

Podaci na drugim jezicima: hrvatski

Posjeta: 987 *