人工智能加速了电磁材料的发现。

IF 16.3 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
National Science Review Pub Date : 2025-02-22 eCollection Date: 2025-04-01 DOI:10.1093/nsr/nwaf066
Ze-Feng Gao, Shuai Qu, Bocheng Zeng, Yang Liu, Ji-Rong Wen, Hao Sun, Peng-Jie Guo, Zhong-Yi Lu
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引用次数: 0

摘要

变磁是一种新的磁相,已被理论提出并被实验证明是不同于铁磁性和反铁磁性的。虽然交替磁体已被发现具有许多奇异的物理性质,但已知的交替磁体材料的有限可用性阻碍了这些性质的研究。因此,发现具有不同性质的更多类型的电磁材料对于全面了解电磁至关重要,从而促进下一代信息技术中的新应用,例如存储设备和高灵敏度传感器。由于每种交磁材料都具有独特的晶体结构,因此我们提出了一种由人工智能(AI)搜索引擎支持的自动发现方法,该方法使用预训练的图神经网络来学习材料晶体结构的内在特征,然后对具有有限正样本的分类器进行微调,以预测给定候选材料的交磁概率。最后,我们成功地发现了50种新的电磁材料,涵盖金属,半导体和绝缘体,并通过第一性原理电子结构计算证实。广泛的电子结构特征表明,这些新发现的变磁材料表现出各种新的物理性质,如反常霍尔效应、反常克尔效应和拓扑性质。值得注意的是,我们首次发现了四种i波变磁材料。总体而言,人工智能搜索引擎的表现要比人类专家好得多,并提出了一系列具有独特性能的新型电磁材料,概述了其加速发现具有目标性能的材料的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-accelerated discovery of altermagnetic materials.

Altermagnetism, a new magnetic phase, has been theoretically proposed and experimentally verified to be distinct from ferromagnetism and antiferromagnetism. Although altermagnets have been found to possess many exotic physical properties, the limited availability of known altermagnetic materials hinders the study of such properties. Hence, discovering more types of altermagnetic materials with different properties is crucial for a comprehensive understanding of altermagnetism and thus facilitating new applications in the next generation of information technologies, e.g. storage devices and high-sensitivity sensors. Since each altermagnetic material has a unique crystal structure, we propose an automated discovery approach empowered by an artificial intelligence (AI) search engine that employs a pre-trained graph neural network to learn the intrinsic features of the material crystal structure, followed by fine-tuning a classifier with limited positive samples to predict the altermagnetism probability of a given material candidate. Finally, we successfully discovered 50 new altermagnetic materials that cover metals, semiconductors and insulators, confirmed by first-principles electronic structure calculations. The wide range of electronic structural characteristics reveals that various novel physical properties manifest in these newly discovered altermagnetic materials, e.g. the anomalous Hall effect, anomalous Kerr effect and topological property. It is worth noting that we discovered four i-wave altermagnetic materials for the first time. Overall, the AI search engine performs much better than human experts and suggests a set of new altermagnetic materials with unique properties, outlining its potential for accelerated discovery of the materials with targeted properties.

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来源期刊
National Science Review
National Science Review MULTIDISCIPLINARY SCIENCES-
CiteScore
24.10
自引率
1.90%
发文量
249
审稿时长
13 weeks
期刊介绍: National Science Review (NSR; ISSN abbreviation: Natl. Sci. Rev.) is an English-language peer-reviewed multidisciplinary open-access scientific journal published by Oxford University Press under the auspices of the Chinese Academy of Sciences.According to Journal Citation Reports, its 2021 impact factor was 23.178. National Science Review publishes both review articles and perspectives as well as original research in the form of brief communications and research articles.
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