Superconductor Discovery in the Emerging Paradigm of Materials Informatics

IF 7 2区 材料科学 Q2 CHEMISTRY, PHYSICAL
Huan Tran*, Hieu-Chi Dam, Christopher Kuenneth, Vu Ngoc Tuoc and Hiori Kino, 
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引用次数: 0

Abstract

The past two decades have witnessed a tremendous number of computational predictions of hydride-based (phonon-mediated) superconductors, mostly at extremely high pressures, i.e., hundreds of gigapascals. These discoveries were strongly driven by Migdal–Éliashberg theory (and its first-principles computational implementations) for electron–phonon interactions, the key concept of phonon-mediated superconductivity. Dozens of predictions were experimentally synthesized and characterized, triggering not only enormous excitement in the community but also some debates. In this work, we review the computationally driven discoveries and the recent developments in the field from various essential aspects, including the theoretically based, computationally based, and, specifically, artificial intelligence/machine learning (AI/ML)-based approaches emerging within the paradigm of materials informatics. While challenges and critical gaps can be found in all of these approaches, AI/ML efforts specifically remain in their infancy for good reasons. However, there are opportunities in which these approaches can be further developed and integrated in concerted efforts, in which AI/ML approaches could play more important roles.

在材料信息学的新兴范式中发现超导体
在过去的二十年里,对基于水化物(声子介导)的超导体进行了大量的计算预测,这些超导体大多处于极高的压力下,即数百千兆帕斯卡。这些发现是由米格达尔-埃利亚什伯格理论(及其第一原理计算实现)对电子-声子相互作用(声子介导超导的关键概念)的有力推动。数十项预言在实验中得到了综合和表征,不仅在学术界引起了巨大反响,也引发了一些争论。在这项工作中,我们从多个基本方面回顾了计算驱动的发现和该领域的最新发展,包括材料信息学范式中出现的基于理论、基于计算,特别是基于人工智能/机器学习(AI/ML)的方法。虽然所有这些方法都存在挑战和关键差距,但人工智能/机器学习方法仍处于起步阶段,这是有充分理由的。不过,这些方法还有进一步发展和整合的机会,人工智能/ML 方法可以在其中发挥更重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemistry of Materials
Chemistry of Materials 工程技术-材料科学:综合
CiteScore
14.10
自引率
5.80%
发文量
929
审稿时长
1.5 months
期刊介绍: The journal Chemistry of Materials focuses on publishing original research at the intersection of materials science and chemistry. The studies published in the journal involve chemistry as a prominent component and explore topics such as the design, synthesis, characterization, processing, understanding, and application of functional or potentially functional materials. The journal covers various areas of interest, including inorganic and organic solid-state chemistry, nanomaterials, biomaterials, thin films and polymers, and composite/hybrid materials. The journal particularly seeks papers that highlight the creation or development of innovative materials with novel optical, electrical, magnetic, catalytic, or mechanical properties. It is essential that manuscripts on these topics have a primary focus on the chemistry of materials and represent a significant advancement compared to prior research. Before external reviews are sought, submitted manuscripts undergo a review process by a minimum of two editors to ensure their appropriateness for the journal and the presence of sufficient evidence of a significant advance that will be of broad interest to the materials chemistry community.
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