Predicting the Curie temperature of Sm-Co-based alloys via data-driven strategy
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- @Article{Xu:2024:actamat,
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author = "Guojing Xu and Feng Cheng and Hao Lu and Chao Hou and
Xiaoyan Song",
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title = "Predicting the {Curie} temperature of {Sm-Co}-based
alloys via data-driven strategy",
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journal = "Acta Materialia",
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year = "2024",
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volume = "274",
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pages = "120026",
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keywords = "genetic algorithms, genetic programming, Machine
learning, Curie temperature, Sensitivity factor, Sm-Co
alloys, Doping element",
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ISSN = "1359-6454",
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URL = "
https://www.sciencedirect.com/science/article/pii/S1359645424003781",
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DOI = "
doi:10.1016/j.actamat.2024.120026",
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abstract = "Calculating the Curie temperature of rare-earth
permanent magnetic materials has remained a big
theoretical challenge. In this study, based on a
home-built Sm-Co-based alloys database, a data-driven
machine learning approach was developed to predict the
Curie temperature of Sm-Co-based alloys.
High-throughput predictions of Curie temperature were
achieved using a genetic program based symbolic
regression model. A classification model based on
logistic regression was established to quantify the
effect of doping on the Curie temperature of
Sm-Co-based alloys. The key physical descriptor
affecting Curie temperature was extracted from the
established machine learning models, and the Curie
temperature sensitivity coefficient was defined. It was
discovered that the doping elements with large
electrical conductivity and similar heat of fusion to
that of Sm are likely to increase the Curie temperature
of Sm-Co-based alloys. The model predictions were
verified quantitatively by the experimental results of
a series of prepared Sm-Co-based samples. This work
provides a high-efficiency method for developing
Sm-Co-based permanent magnets with high Curie
temperatures",
- }
Genetic Programming entries for
Guojing Xu
Feng Cheng
Hao Lu
Chao Hou
Xiaoyan Song
Citations