48th Vietnam Conference on Theoretical Physics (VCTP-48)
Hội nghị Vật lý lý thuyết Việt Nam lần thứ 48
Đà Nẵng, 31 July - 3 August, 2023

Programme

P.8 -- Poster, VCTP-48

Date: Tuesday, 1 August 2023

Time: 08:30 - 10:00

Machine-learning approach for discovery of conventional superconductors

Huan Tran(1) and Tuoc N. Vu (2)

(1)School of Materials Science & Engineering, Georgia Institute of Technology, 771 Ferst Drive NW, Atlanta, Georgia 30332, USA (2)Institute of Engineering Physics, Hanoi University of Science & Technology, 1 Dai Co Viet Road, Hanoi 10000, Vietnam

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 future discoveries if their reliability can be improved. The main challenge of current ML approaches, typically aiming at predicting the critical temperature T_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 paper, we show that predicting superconductivity at any pressure from the atomic structure is sustainable and reliable. For a demonstration, we curated a diverse data set 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_c can be computed in a postprocessing manner. The models were validated and used to identify two possible superconductors whose T_c≃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_c superconductivity to zero pressure. Going forward, this strategy will be improved to better contribute to the discovery of new superconductors. [https://journals.aps.org/prmaterials/abstract/10.1103/PhysRevMaterials.7.054805]

Presenter: Vu Ngoc-Tuoc


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