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Modeling of Curie temperature of manganite for magnetic refrigeration application using manual search and hybrid gravitational-based support vector regression

Owolabi, Taoreed O.; Akande, Kabiru O.; Olatunji, Sunday O.; Alqahtani, Abdullah; Aldhafferid, Nahier

Authors

Taoreed O. Owolabi

Kabiru Akande Kabiru.Akande@uwe.ac.uk
Research Fellow - Conversational AI

Sunday O. Olatunji

Abdullah Alqahtani

Nahier Aldhafferid



Abstract

Magnetic refrigeration (MR) combines many unique features such as low cost, high efficiency and environmental friendliness which make it preferred to the conventional gas compression system of refrigeration. MR employs manganite-based material due to its high magnetocaloric effect as well as tunable Curie temperature (𝑇C). For effective utilization of this technology, 𝑇C of manganite refrigerant needs to be tuned to ambient room temperature. In order to relieve experimental stress involved and consequently save valuable time and resources, support vector regression (SVR) computational intelligence technique is proposed using manual search (MS-SVR) and a novel gravitational search algorithm (GSA-SVR) for its hyper-parameter optimization. The developed GSA-SVR model shows better performance than MS-SVR model with performance improvement of 86.03% on the basis of root mean square error (RMSE) and 0.07% on the basis of correlation coefficient (CC) on the training dataset while 11.48% of RMSE improvement and 2.48% of CC improvement were recorded for the testing dataset. The outstanding results presented in this work suggest the potential of the proposed models in promoting room temperature MR through quick estimation of the effect of dopants on 𝑇C so as to obtain manganite that works well around the room temperature without loss of precision.

Citation

Owolabi, T. O., Akande, K. O., Olatunji, S. O., Alqahtani, A., & Aldhafferid, N. (2018). Modeling of Curie temperature of manganite for magnetic refrigeration application using manual search and hybrid gravitational-based support vector regression. Soft Computing, 22(9), 3023-3032. https://doi.org/10.1007/s00500-017-2554-2

Journal Article Type Article
Acceptance Date Apr 10, 2017
Online Publication Date Mar 22, 2017
Publication Date 2018-05
Deposit Date May 21, 2021
Journal Soft Computing
Print ISSN 1432-7643
Electronic ISSN 1433-7479
Publisher Springer (part of Springer Nature)
Peer Reviewed Peer Reviewed
Volume 22
Issue 9
Pages 3023-3032
DOI https://doi.org/10.1007/s00500-017-2554-2
Public URL https://uwe-repository.worktribe.com/output/5289301