Fe-based superconducting transition temperature modeling by machine learning: A computer science method

Dhaka, Mahendra Singh and Hu, Zhiyuan (2021) Fe-based superconducting transition temperature modeling by machine learning: A computer science method. PLOS ONE, 16 (8). e0255823. ISSN 1932-6203

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Abstract

Searching for new high temperature superconductors has long been a key research issue. Fe-based superconductors attract researchers’ attention due to their high transition temperature, strong irreversibility field, and excellent crystallographic symmetry. By using doping methods and dopant levels, different types of new Fe-based superconductors are synthesized. The transition temperature is a key indicator to measure whether new superconductors are high temperature superconductors. However, the condition for measuring transition temperature are strict, and the measurement process is dangerous. There is a strong relationship between the lattice parameters and the transition temperature of Fe-based superconductors. To avoid the difficulties in measuring transition temperature, in this paper, we adopt a machine learning method to build a model based on the lattice parameters to predict the transition temperature of Fe-based superconductors. The model results are in accordance with available transition temperatures, showing 91.181% accuracy. Therefore, we can use the proposed model to predict unknown transition temperatures of Fe-based superconductors.

Item Type: Article
Subjects: Universal Eprints > Computer Science
Depositing User: Managing Editor
Date Deposited: 07 Jan 2023 06:30
Last Modified: 04 Sep 2023 06:55
URI: http://journal.article2publish.com/id/eprint/235

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