Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina

Chemical attack is one of the most significant issues affecting porous ceramic systems employed as membranes for separation technologies, which necessitate frequent system reliability testing. In this work, the non-linear predictive power of a hybridized machine learning prediction model, specifical...

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Main Authors: Dele-Afolabi, T.T., Jung, D.W., Ahmadipour, Masoud, Azmah Hanim, M.A., Adeleke, A.O., Kandasamy, M., Gunnasegaran, Prem
Format: Article
Language:English
Published: Elsevier Editora Ltda 2024
Online Access:http://psasir.upm.edu.my/id/eprint/114479/
http://psasir.upm.edu.my/id/eprint/114479/1/114479.pdf
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author Dele-Afolabi, T.T.
Jung, D.W.
Ahmadipour, Masoud
Azmah Hanim, M.A.
Adeleke, A.O.
Kandasamy, M.
Gunnasegaran, Prem
author_facet Dele-Afolabi, T.T.
Jung, D.W.
Ahmadipour, Masoud
Azmah Hanim, M.A.
Adeleke, A.O.
Kandasamy, M.
Gunnasegaran, Prem
author_sort Dele-Afolabi, T.T.
building UPM Institutional Repository
collection Online Access
description Chemical attack is one of the most significant issues affecting porous ceramic systems employed as membranes for separation technologies, which necessitate frequent system reliability testing. In this work, the non-linear predictive power of a hybridized machine learning prediction model, specifically Jaya-XGBoost to predict the corrosion-induced mass loss of monolithic and nickel-reinforced porous alumina ceramics has been examined. This study demonstrates the mass loss of monolithic and Ni-reinforced porous alumina developed using rice husk and sugarcane bagasse in acidic and alkaline corrosive media. Based on empirical findings, the formation of a very stable Ni3Al2SiO8 spinelloid phase in the RH-graded composites increased their chemical stability in the corrosive environments compared to their monolithic and corresponding SCB-graded counterparts. Corrosion testing data of these specimens were collected and fitted into both XGBoost and Jaya-XGBoost machine learning algorithms. The results showed that the Jaya-XGBoost model performed better in predicting the corrosion-induced mass loss of both the monolithic and the nickel-reinforced porous alumina than the regular XGBoost model in terms of statistical accuracy measures. The Jaya-XGBoost model developed in this study effectively predicted the mass loss in NaOH (R2 = 0.9984; MAE = 0.0168) and mass loss in H2SO4 (R2 = 0.9824; MAE = 0.0217) of the monolithic and nickel-reinforced porous alumina. The precision that can be obtained by modifying hyper-parameters with the Jaya method, combined with the well-known accuracy of XGBoost, renders the proposed model novel.
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spelling upm-1144792025-01-16T02:24:36Z http://psasir.upm.edu.my/id/eprint/114479/ Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina Dele-Afolabi, T.T. Jung, D.W. Ahmadipour, Masoud Azmah Hanim, M.A. Adeleke, A.O. Kandasamy, M. Gunnasegaran, Prem Chemical attack is one of the most significant issues affecting porous ceramic systems employed as membranes for separation technologies, which necessitate frequent system reliability testing. In this work, the non-linear predictive power of a hybridized machine learning prediction model, specifically Jaya-XGBoost to predict the corrosion-induced mass loss of monolithic and nickel-reinforced porous alumina ceramics has been examined. This study demonstrates the mass loss of monolithic and Ni-reinforced porous alumina developed using rice husk and sugarcane bagasse in acidic and alkaline corrosive media. Based on empirical findings, the formation of a very stable Ni3Al2SiO8 spinelloid phase in the RH-graded composites increased their chemical stability in the corrosive environments compared to their monolithic and corresponding SCB-graded counterparts. Corrosion testing data of these specimens were collected and fitted into both XGBoost and Jaya-XGBoost machine learning algorithms. The results showed that the Jaya-XGBoost model performed better in predicting the corrosion-induced mass loss of both the monolithic and the nickel-reinforced porous alumina than the regular XGBoost model in terms of statistical accuracy measures. The Jaya-XGBoost model developed in this study effectively predicted the mass loss in NaOH (R2 = 0.9984; MAE = 0.0168) and mass loss in H2SO4 (R2 = 0.9824; MAE = 0.0217) of the monolithic and nickel-reinforced porous alumina. The precision that can be obtained by modifying hyper-parameters with the Jaya method, combined with the well-known accuracy of XGBoost, renders the proposed model novel. Elsevier Editora Ltda 2024-10-28 Article PeerReviewed text en cc_by_nc_nd_4 http://psasir.upm.edu.my/id/eprint/114479/1/114479.pdf Dele-Afolabi, T.T. and Jung, D.W. and Ahmadipour, Masoud and Azmah Hanim, M.A. and Adeleke, A.O. and Kandasamy, M. and Gunnasegaran, Prem (2024) Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina. Journal of Materials Research and Technology, 33. pp. 5909-5921. ISSN 2238-7854; eISSN: 2214-0697 https://linkinghub.elsevier.com/retrieve/pii/S2238785424024918 10.1016/j.jmrt.2024.10.221
spellingShingle Dele-Afolabi, T.T.
Jung, D.W.
Ahmadipour, Masoud
Azmah Hanim, M.A.
Adeleke, A.O.
Kandasamy, M.
Gunnasegaran, Prem
Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title_full Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title_fullStr Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title_full_unstemmed Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title_short Jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and Ni-reinforced porous alumina
title_sort jaya algorithm hybridized with extreme gradient boosting to predict the corrosion-induced mass loss of agro-waste based monolithic and ni-reinforced porous alumina
url http://psasir.upm.edu.my/id/eprint/114479/
http://psasir.upm.edu.my/id/eprint/114479/
http://psasir.upm.edu.my/id/eprint/114479/
http://psasir.upm.edu.my/id/eprint/114479/1/114479.pdf