论文标题
扭曲双层石墨烯的拉曼光谱分析的机器学习模型
Machine-learning models for Raman spectra analysis of twisted bilayer graphene
论文作者
论文摘要
由于其低对称性构型的复杂能量景观,扭曲的双层石墨烯(TBLG)的振动特性显示出复杂的特征。开发了一种基于机器学习的方法,以在扭曲角度和TBLG的模拟拉曼光谱之间提供连续的模型。从拉曼光谱中提取扭曲角的结构信息对应于解决复杂的逆问题。训练后,机器学习回归器(MLR)迅速提供没有人类偏见的预测,平均98%的数据差异由模型解释。分析了通过MLR学到的重要光谱特征,揭示了计算出的G波段附近的强度曲线是最重要的特征。训练有素的模型对含噪声的测试数据进行了测试,以证明其稳健性。在验证用于构建分析数据库的理论水平的背景下,讨论了本模型向实验性拉曼光谱的可传递性。这项工作是一种概念证明,即机器学习分析是解释TBLG和其他2D材料的拉曼光谱的潜在强大工具。
The vibrational properties of twisted bilayer graphene (tBLG) show complex features, due to the intricate energy landscape of its low-symmetry configurations. A machine learning-based approach is developed to provide a continuous model between the twist angle and the simulated Raman spectra of tBLGs. Extracting the structural information of the twist angle from Raman spectra corresponds to solving a complicated inverse problem. Once trained, the machine learning regressors (MLRs) quickly provide predictions without human bias and with an average of 98% of the data variance being explained by the model. The significant spectral features learned by MLRs are analyzed revealing the intensity profile near the calculated G-band to be the most important feature. The trained models are tested on noise-containing test data demonstrating their robustness. The transferability of the present models to experimental Raman spectra is discussed in the context of validation of the level of theory used for the construction of the analyzed database. This work serves as a proof of concept that machine-learning analysis is a potentially powerful tool for interpretation of Raman spectra of tBLG and other 2D materials.