Ryou Sanghyeok, Lim Jihyun, Jang Minwoo, Eom Kitae, Lee Sunwoo, Lee Hyungwoo
Department of Physics and Department of Energy Systems Research, Ajou University, Suwon, 16499, Republic of Korea.
Department of Computer Engineering, Inha University, Incheon, 22212, Republic of Korea.
Adv Sci (Weinh). 2025 Jun;12(23):e2417811. doi: 10.1002/advs.202417811. Epub 2025 Apr 26.
Ferromagnetic perovskite oxides, particularly LaSrMnO (LSMO), show significant promise for spintronics and electromagnetic applications due to their unique half-metallicity and colossal magnetoresistance properties. These properties are known to arise from Mn-O-Mn double-exchange interactions, which are directly related to microscopic lattice structures. However, since the microscopic structure in LSMO is highly sensitive to various material parameters, such as thickness, lattice strain, oxygen deficiency, and cation stoichiometry, understanding the intricate relationship between the microscopic structures and the resulting physical properties of LSMO remains challenging. Herein, a machine learning approach is introduced to characterize ferromagnetic LSMO thin films by featurization of their surface morphology. Using an ensemble machine learning method, the non-linear correlations between surface morphology and the electronic, magnetic properties of LSMO thin films are captured and modeled. Based on these estimated correlations, LSMO thin films are classified into five representative types, each characterized by distinctive properties and surface morphologies. These results imply that surface morphology can reveal hidden information about the strongly correlated properties of ferromagnetic LSMO thin films. Consequently, the machine learning-based approach provides an efficient method for understanding the correlated material properties of ferromagnetic oxides and related materials through surface morphology analysis.
铁磁钙钛矿氧化物,特别是镧锶锰氧化物(LSMO),由于其独特的半金属性和巨磁阻特性,在自旋电子学和电磁应用方面展现出巨大潜力。已知这些特性源于Mn-O-Mn双交换相互作用,而这与微观晶格结构直接相关。然而,由于LSMO中的微观结构对各种材料参数高度敏感,如厚度、晶格应变、氧缺陷和阳离子化学计量比,理解微观结构与LSMO所产生的物理性质之间的复杂关系仍然具有挑战性。在此,引入一种机器学习方法,通过对铁磁LSMO薄膜的表面形态进行特征提取来对其进行表征。使用一种集成机器学习方法,捕捉并建模表面形态与LSMO薄膜的电子、磁性性质之间的非线性相关性。基于这些估计的相关性,将LSMO薄膜分为五种代表性类型,每种类型都具有独特的性质和表面形态。这些结果表明,表面形态可以揭示铁磁LSMO薄膜强相关性质的隐藏信息。因此,基于机器学习的方法为通过表面形态分析理解铁磁氧化物及相关材料的相关材料性质提供了一种有效方法。