超导电性
涡流
凝聚态物理
扫描隧道显微镜
扫描隧道光谱
物理
量子隧道
局域态密度
拓扑(电路)
数学
热力学
组合数学
作者
Yueming Guo,Hu Miao,Qiang Zou,Mingming Fu,Athena S. Sefat,Andrew R. Lupini,Sergei V. Kalinin,Zheng Gai
出处
期刊:2D materials
[IOP Publishing]
日期:2024-07-03
卷期号:11 (4): 045004-045004
被引量:1
标识
DOI:10.1088/2053-1583/ad5e92
摘要
Abstract In type-II superconductors, electronic states within magnetic vortices hold crucial information about the paring mechanism and can reveal non-trivial topology. While scanning tunneling microscopy/spectroscopy (STM/S) is a powerful tool for imaging superconducting vortices, it is challenging to isolate the intrinsic electronic properties from extrinsic effects like subsurface defects and disorders. Here we combine STM/STS with basic machine learning to develop a method for screening out the vortices pinned by embedded disorder in iron-based superconductors. Through a principal component analysis of large STS data within vortices, we find that the vortex-core states in Ba(Fe 0.96 Ni 0.04 ) 2 As 2 start to split into two categories at certain magnetic field strengths, reflecting vortices with and without pinning by subsurface defects or disorders. Our machine-learning analysis provides an unbiased approach to reveal intrinsic vortex-core states in novel superconductors and shed light on ongoing puzzles in the possible emergence of a Majorana zero mode.
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