Machine Learning-Assisted Nano-imaging and Spectroscopy of Phase Coexistence in a Wide-Bandgap Semiconductor
Machine Learning-Assisted Nano-imaging and Spectroscopy of Phase Coexistence in a Wide-Bandgap Semiconductor
Wide bandgap semiconductors with high room temperature mobilities are promising materials for high-power electronics. Stannate films provide wide bandgaps and optical transparency, although electron-phonon scattering can limit mobilities. In SrSnO3, epitaxial strain engineering stabilizes a high-mobility tetragonal phase at room temperature, resulting in a threefold increase in electron mobility among doped films. However, strain relaxation in thicker films leads to nanotextured coexistence of tetragonal and orthorhombic phases with unclear implications for optoelectronic performance. The observed nanoscale phase coexistence demands nano-spectroscopy to supply spatial resolution beyond conventional, diffraction-limited microscopy. With nano-infrared spectroscopy, we provide a comprehensive analysis of phase coexistence in SrSnO3 over a broad energy range, distinguishing inhomogeneous phonon and plasma responses arising from structural and electronic domains. We establish Nanoscale Imaging and Spectroscopy with Machine-learning Assistance (NISMA) to map nanotextured phases and quantify their distinct optical responses through a robust quantitative analysis, which can be applied to a broad array of complex oxide materials.
Alyssa Bragg、Fengdeng Liu、Zhifei Yang、Nitzan Hirshberg、Madison Garber、Brayden Lukaskawcez、Liam Thompson、Shane MacDonald、Hayden Binger、Devon Uram、Ashley Bucsek、Bharat Jalan、Alexander McLeod
信息科学、信息技术计算技术、计算机技术物理学晶体学
Alyssa Bragg,Fengdeng Liu,Zhifei Yang,Nitzan Hirshberg,Madison Garber,Brayden Lukaskawcez,Liam Thompson,Shane MacDonald,Hayden Binger,Devon Uram,Ashley Bucsek,Bharat Jalan,Alexander McLeod.Machine Learning-Assisted Nano-imaging and Spectroscopy of Phase Coexistence in a Wide-Bandgap Semiconductor[EB/OL].(2025-07-23)[2025-08-18].https://arxiv.org/abs/2507.17677.点此复制
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