Yi-Chuan Tang, Kai-Yan Cao, Ruo-Nan Ma, Jia-Bin Wang, Yin Zhang, Dong-Yan Zhang, Chao Zhou, Fang-Hua Tian, Min-Xia Fang, Sen Yang
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引用次数: 0
摘要
随着人工智能的飞速发展,磁致性材料以及其他材料的开发效率和性能也在不断提高。然而,大多数研究并未考虑相变,因此预测结果通常不够准确。在这种情况下,我们通过特征归因建立了合金成分与相变之间的可解释关系。我们提出了一种简便的机器学习方法来筛选具有所需磁性熵变和磁转变温度的候选镍锰基 Heusler 合金,其精度 R2≈0.98 高。不出所料,制备的镍锰基合金的实测特性,包括相变类型、磁熵变化和转变温度,都与机器学习的预测结果十分吻合。我们提出的 ML 模型不仅首次证明了合金成分、相变和磁致性之间的可解释关系,而且具有很强的预测性和可解释性,可为未来确定高性能磁致性材料提供坚实的理论基础。
Accurate prediction of magnetocaloric effect in NiMn-based Heusler alloys by prioritizing phase transitions through explainable machine learning
With the rapid development of artificial intelligence, magnetocaloric materials as well as other materials are being developed with increased efficiency and enhanced performance. However, most studies do not take phase transitions into account, and as a result, the predictions are usually not accurate enough. In this context, we have established an explicable relationship between alloy compositions and phase transition by feature imputation. A facile machine learning is proposed to screen candidate NiMn-based Heusler alloys with desired magnetic entropy change and magnetic transition temperature with a high accuracy R2≈0.98. As expected, the measured properties of prepared NiMn-based alloys, including phase transition type, magnetic entropy changes and transition temperature, are all in good agreement with the ML predictions. As well as being the first to demonstrate an explicable relationship between alloy compositions, phase transitions and magnetocaloric properties, our proposed ML model is highly predictive and interpretable, which can provide a strong theoretical foundation for identifying high-performance magnetocaloric materials in the future.
期刊介绍:
Rare Metals is a monthly peer-reviewed journal published by the Nonferrous Metals Society of China. It serves as a platform for engineers and scientists to communicate and disseminate original research articles in the field of rare metals. The journal focuses on a wide range of topics including metallurgy, processing, and determination of rare metals. Additionally, it showcases the application of rare metals in advanced materials such as superconductors, semiconductors, composites, and ceramics.