2024
DOI: 10.1063/5.0206855
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Enhancing magnetocaloric material discovery: A machine learning approach using an autogenerated database by large language models

Jiaoyue Yuan,
Runqing Yang,
Lokanath Patra
et al.

Abstract: Magnetic cooling based on the magnetocaloric effect is a promising solid-state refrigeration technology for a wide range of applications in different temperature ranges. Previous studies have mostly focused on near room temperature (300 K) and cryogenic temperature (<10 K) ranges, while important applications such as hydrogen liquefaction call for efficient magnetic refrigerants for the intermediate temperature range of 10–100 K. For efficient use in this range, new magnetocaloric materials with matchin… Show more

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