论文标题

发现常规超导体的机器学习方法

Machine-learning approach for discovery of conventional superconductors

论文作者

Tran, Huan, Vu, Tuoc N.

论文摘要

第一原理计算是在过去十年中,基于氢化物的超导体的众多发现的推动力,主要是在高压下。如果可以提高其可靠性,则可以进一步加速未来的发现(ML)方法。当前ML方法的主要挑战,通常旨在预测固体从其化学成分和目标压力中的固体的临界温度$ t _ {\ rm c} $,是,要学习的相关性是深层隐藏,间接和不确定的。在这项工作中,我们表明,在原子结构的任何压力下预测超导性是可持续且可靠的。为了进行演示,我们策划了584个原子结构的不同数据集,其中计算了$λ$和$ω_ {\ log} $,这是电子 - phonon交互的两个参数。然后,我们训练了一些ML模型来预测$λ$和$ω_ {\ log} $,从中可以以后处理方式计算$ t _ {\ rm c} $。对模型进行了验证,并用于识别两个可能的超导体,它们的$ t _ {\ rm c} \ simeq 10-15 $ k在零压力下。有趣的是,这些材料已在其他某些情况下进行了合成和研究。总而言之,所提出的ML方法使一条途径可以直接从高压原子级别的细节中传递到与高$ t _ {\ rm c} $超导性相关的高压原子级细节。展望未来,将改进该策略,以更好地为新超导体的发现做出贡献。

First-principles computations are the driving force behind numerous discoveries of hydride-based superconductors, mostly at high pressures, during the last decade. Machine-learning (ML) approaches can further accelerate the future discoveries if their reliability can be improved. The main challenge of current ML approaches, typically aiming at predicting the critical temperature $T_{\rm c}$ of a solid from its chemical composition and target pressure, is that the correlations to be learned are deeply hidden, indirect, and uncertain. In this work, we showed that predicting superconductivity at any pressure from the atomic structure is sustainable and reliable. For a demonstration, we curated a diverse dataset of 584 atomic structures for which $λ$ and $ω_{\log}$, two parameters of the electron-phonon interactions, were computed. We then trained some ML models to predict $λ$ and $ω_{\log}$, from which $T_{\rm c}$ can be computed in a post-processing manner. The models were validated and used to identify two possible superconductors whose $T_{\rm c}\simeq 10-15$K at zero pressure. Interestingly, these materials have been synthesized and studied in some other contexts. In summary, the proposed ML approach enables a pathway to directly transfer what can be learned from the high-pressure atomic-level details that correlate with high-$T_{\rm c}$ superconductivity to zero pressure. Going forward, this strategy will be improved to better contribute to the discoveries of new superconductors.

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