Research Article

MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK

Volume: 12 Number: 2 June 1, 2024
EN

MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK

Abstract

In this study, the malachite green adsorption process using Amberlite IRC-748 and Diaion CR-11 resins was modelled by artificial neural network method. In the model created for this study, adsorbent dosage, initial malachite green concentration and contact time parameters, which are the independent variables of the adsorption process, were used as input. Adsorption percentage values, which are the dependent variables of the adsorption process, were obtained as output. Mean squared error (MSE) and determination coefficient (R2) values were obtained from the models created using thirty-one experimental data for adsorption of malachite green with Amberlite IRC-748 and thirty-eight experimental data for adsorption with Diaion CR-11. By evaluating these values together, the most appropriate training algorithm, transfer function in the hidden layer and the number of neurons in the hidden layer were defined. Accordingly, for both Amberlite IRC-748 and Diaion CR-11 resins, the optimum training algorithm was determined as Levenberg-Marquardt back-propagation and the optimum hidden layer transfer function as tan sigmoid. The optimum number of neurons in the hidden layer was identified as 13 for Amberlite IRC-748 and 12 for Diaion CR11. The MSE, R2all and R2test values of the models produced with the optimum parameters were obtained as 0.000261, 0.9972, 0.9903 for Amberlite IRC-748 and 0.000482, 0.9932, 0.9931 for Diaion CR11, respectively.

Keywords

References

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Details

Primary Language

English

Subjects

Wastewater Treatment Processes

Journal Section

Research Article

Publication Date

June 1, 2024

Submission Date

February 16, 2024

Acceptance Date

April 30, 2024

Published in Issue

Year 2024 Volume: 12 Number: 2

APA
Ecevit, H., Yanardağ Kola, D., Edebalı, S., & Altun, T. (2024). MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK. Konya Journal of Engineering Sciences, 12(2), 531-541. https://doi.org/10.36306/konjes.1437722
AMA
1.Ecevit H, Yanardağ Kola D, Edebalı S, Altun T. MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK. KONJES. 2024;12(2):531-541. doi:10.36306/konjes.1437722
Chicago
Ecevit, Hüseyin, Duygu Yanardağ Kola, Serpil Edebalı, and Türkan Altun. 2024. “MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK”. Konya Journal of Engineering Sciences 12 (2): 531-41. https://doi.org/10.36306/konjes.1437722.
EndNote
Ecevit H, Yanardağ Kola D, Edebalı S, Altun T (June 1, 2024) MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK. Konya Journal of Engineering Sciences 12 2 531–541.
IEEE
[1]H. Ecevit, D. Yanardağ Kola, S. Edebalı, and T. Altun, “MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK”, KONJES, vol. 12, no. 2, pp. 531–541, June 2024, doi: 10.36306/konjes.1437722.
ISNAD
Ecevit, Hüseyin - Yanardağ Kola, Duygu - Edebalı, Serpil - Altun, Türkan. “MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK”. Konya Journal of Engineering Sciences 12/2 (June 1, 2024): 531-541. https://doi.org/10.36306/konjes.1437722.
JAMA
1.Ecevit H, Yanardağ Kola D, Edebalı S, Altun T. MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK. KONJES. 2024;12:531–541.
MLA
Ecevit, Hüseyin, et al. “MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK”. Konya Journal of Engineering Sciences, vol. 12, no. 2, June 2024, pp. 531-4, doi:10.36306/konjes.1437722.
Vancouver
1.Hüseyin Ecevit, Duygu Yanardağ Kola, Serpil Edebalı, Türkan Altun. MODELING OF MALACHITE GREEN ADSORPTION ONTO AMBERLITE IRC-748 AND DIAION CR-11 COMMERCIAL RESINS BY ARTIFICIAL NEURAL NETWORK. KONJES. 2024 Jun. 1;12(2):531-4. doi:10.36306/konjes.1437722

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