非弹性中子散射
计算机科学
谱线
中子散射
非弹性散射
代表(政治)
中子
人工神经网络
人工智能
计算科学
计算物理学
机器学习
物理
生物系统
散射
光学
核物理学
天文
政治
政治学
法学
生物
作者
Yongqiang Cheng,Geoffrey Wu,Daniel M. Pajerowski,M. B. Stone,A. T. Savici,Mingda Li,Anibal J. Ramirez‐Cuesta
标识
DOI:10.1088/2632-2153/acb315
摘要
Abstract Inelastic neutron scattering (INS) is a powerful technique to study vibrational dynamics of materials with several unique advantages. However, analysis and interpretation of INS spectra often require advanced modeling that needs specialized computing resources and relevant expertise. This difficulty is compounded by the limited experimental resources available to perform INS measurements. In this work, we develop a machine-learning based predictive framework which is capable of directly predicting both one-dimensional INS spectra and two-dimensional INS spectra with additional momentum resolution. By integrating symmetry-aware neural networks with autoencoders, and using a large scale synthetic INS database, high-dimensional spectral data are compressed into a latent-space representation, and a high-quality spectra prediction is achieved by using only atomic coordinates as input. Our work offers an efficient approach to predict complex multi-dimensional neutron spectra directly from simple input; it allows for improved efficiency in using the limited INS measurement resources, and sheds light on building structure-property relationships in a variety of on-the-fly experimental data analysis scenarios.
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