拉曼光谱
比例(比率)
光谱(功能分析)
材料科学
物理
光学
量子力学
作者
Olivier Malenfant-Thuot,Dounia Shaman Kabakiko,Simon Blackburn,Bruno Rousseau,Michel Côté
出处
期刊:Cornell University - arXiv
日期:2024-10-27
标识
DOI:10.48550/arxiv.2410.20417
摘要
We introduce a machine learning prediction workflow to study the impact of defects on the Raman response of 2D materials. By combining the use of machine-learned interatomic potentials, the Raman-active $\Gamma$-weighted density of states method and splitting configurations in independant patches, we are able to reach simulation sizes in the tens of thousands of atoms, with diagonalization now being the main bottleneck of the simulation. We apply the method to two systems, isotopic graphene and defective hexagonal boron nitride, and compare our predicted Raman response to experimental results, with good agreement. Our method opens up many possibilities for future studies of Raman response in solid-state physics.
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