磁制冷
铁磁性
稀土
凝聚态物理
材料科学
人工智能
熵(时间箭头)
机器学习
热力学
磁场
计算机科学
物理
冶金
磁化
量子力学
作者
Kensei Terashima,Pedro Baptista de Castro,Akiko Saito,Takafumi D. Yamamoto,Ryo Matsumoto,Hiroyuki Takeya,Yoshihiko Takano
标识
DOI:10.1080/27660400.2023.2217474
摘要
Stimulated by a recent report of a giant magnetocaloric effect in HoB$_2$ found via machine-learning predictions, we have explored the magnetocaloric properties of a related compound ErB$_2$, that has remained the last ferromagnetic material among the rare-earth diboride (REB$_2$) family with unreported magnetic entropy change |{\Delta}SM|. The evaluated $|\Delta S_M|$ at field change of 5 T in ErB$_2$ turned out to be as high as 26.1 (J kg$^{-1}$ K$^{-1}$) around the ferromagnetic transition (${T_C}$) of 14 K. In this series, HoB$_2$ is found to be the material with the largest $|\Delta S_M|$ as the model predicted, while the predicted values showed a deviation with a systematic error compared to the experimental values. Through a coalition analysis using SHAP, we explore how this rare-earth dependence and the deviation in the prediction are deduced in the model. We further discuss how SHAP analysis can be useful in clarifying favorable combinations of constituent atoms through the machine-learned model with compositional descriptors. This analysis helps us to perform materials design with aid of machine learning of materials data.
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