LAPSE:2023.11412
Published Article

LAPSE:2023.11412
Prediction of Oil Sorption Capacity on Carbonized Mixtures of Shungite Using Artificial Neural Networks
February 27, 2023
Abstract
Using the mixture of carbonized rice husk and shungite from the Kazakhstan Koksu deposit and the experimentally determined oil sorption capacity from contaminated soil with oil originating in the Karazhanbas oil field, a set of Artificial Neural Network (ANN) models were built for sorption predictions. The ANN architecture design, training, validation and testing methodology were performed, and the sorption capacity prediction was evaluated. The ANN models were successfully trained for capturing the sorption capacity dependence on time and on a carbonized rice husk and shungite mixture ratio for the 10% and 15% oil-contaminated soil. The best trained ANNs revealed a very good prediction capability for the testing data subset, demonstrated by the high coefficient of the determination values of R2 = 0.998 and R2 = 0.981 and the mean absolute percentage errors ranging from 1.60% to 3.16%. Furthermore, the ANN sorption models proved their interpolation ability and utility for predicting the sorption capacity for any time moments in the investigated time interval of 60 days and for new values of the shungite and rice husk mixture ratios. The ANN developed models open opportunities for planning new experiments, maximizing the sorption performance and for the design of dedicated equipment.
Using the mixture of carbonized rice husk and shungite from the Kazakhstan Koksu deposit and the experimentally determined oil sorption capacity from contaminated soil with oil originating in the Karazhanbas oil field, a set of Artificial Neural Network (ANN) models were built for sorption predictions. The ANN architecture design, training, validation and testing methodology were performed, and the sorption capacity prediction was evaluated. The ANN models were successfully trained for capturing the sorption capacity dependence on time and on a carbonized rice husk and shungite mixture ratio for the 10% and 15% oil-contaminated soil. The best trained ANNs revealed a very good prediction capability for the testing data subset, demonstrated by the high coefficient of the determination values of R2 = 0.998 and R2 = 0.981 and the mean absolute percentage errors ranging from 1.60% to 3.16%. Furthermore, the ANN sorption models proved their interpolation ability and utility for predicting the sorption capacity for any time moments in the investigated time interval of 60 days and for new values of the shungite and rice husk mixture ratios. The ANN developed models open opportunities for planning new experiments, maximizing the sorption performance and for the design of dedicated equipment.
Record ID
Keywords
artificial neural networks, carbonization, crude oil, Modelling, rice husk, shungite, sorption
Suggested Citation
Cristea VM, Baigulbayeva M, Ongarbayev Y, Smailov N, Akkazin Y, Ubaidulayeva N. Prediction of Oil Sorption Capacity on Carbonized Mixtures of Shungite Using Artificial Neural Networks. (2023). LAPSE:2023.11412
Author Affiliations
Cristea VM: Faculty of Chemistry and Chemical Engineering, Babes-Bolyai University, 11 Arany Janos, 400082 Cluj-Napoca, Romania
Baigulbayeva M: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan
Ongarbayev Y: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan; Institute of Combustion Problems, 172 Bogenbai Batyr Street, Almaty 050012, Kazakhstan [ORCID]
Smailov N: Department of Electronics, Telecommunications and Space Technologies, Satbayev University, 22a Satpaev Street, Almaty 050013, Kazakhstan; Institute of Mechanics and Machine Science Named by Academician U.A.Dzholdasbekov, 29 Kurmangazy Street, Almaty 05001 [ORCID]
Akkazin Y: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan
Ubaidulayeva N: Department of Chemistry and Chemical Technology, K. Zhubanov Aktobe Regional University, 34 A. Moldagulova Avenue, Aktobe 030000, Kazakhstan [ORCID]
Baigulbayeva M: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan
Ongarbayev Y: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan; Institute of Combustion Problems, 172 Bogenbai Batyr Street, Almaty 050012, Kazakhstan [ORCID]
Smailov N: Department of Electronics, Telecommunications and Space Technologies, Satbayev University, 22a Satpaev Street, Almaty 050013, Kazakhstan; Institute of Mechanics and Machine Science Named by Academician U.A.Dzholdasbekov, 29 Kurmangazy Street, Almaty 05001 [ORCID]
Akkazin Y: Faculty of Chemistry and Chemical Technology, Al-Farabi Kazakh National University, 71 Al-Farabi Avenue, Almaty 050040, Kazakhstan
Ubaidulayeva N: Department of Chemistry and Chemical Technology, K. Zhubanov Aktobe Regional University, 34 A. Moldagulova Avenue, Aktobe 030000, Kazakhstan [ORCID]
Journal Name
Processes
Volume
11
Issue
2
First Page
518
Year
2023
Publication Date
2023-02-08
ISSN
2227-9717
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Original Submission
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PII: pr11020518, Publication Type: Journal Article
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LAPSE:2023.11412
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https://doi.org/10.3390/pr11020518
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