机器学习加速了材料科学分子动力学的拉曼计算。

IF 3.1 2区 化学 Q3 CHEMISTRY, PHYSICAL
David A Egger, Manuel Grumet, Tomáš Bučko
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引用次数: 0

摘要

拉曼光谱是一种强大的实验技术,用于表征分子和材料,在许多实验室中使用。拉曼光谱的第一性原理理论计算是重要的,因为它们阐明了这些系统中拉曼活性的微观效应。这些计算通常使用正则谐波近似进行,它不能捕捉拉曼响应中的某些热变化。非调和振动效应最近被发现在几种材料中起着至关重要的作用,这激发了超越谐波声子的拉曼效应的理论处理。虽然分子动力学拉曼光谱(MD-Raman)是一种成熟的方法,包括非谐波振动和进一步相关的热效应,但长期以来,MD-Raman计算被认为对于实际材料计算来说计算成本太高。在这篇透视文章中,我们强调了机器学习背景下的最新进展,现在已经大大加速了所涉及的计算任务,而不会牺牲准确性或预测能力。这些最近的发展突出了md -拉曼及其相关方法作为分子和材料理论预测和表征的通用工具的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning accelerates Raman computations from molecular dynamics for materials science.

Raman spectroscopy is a powerful experimental technique for characterizing molecules and materials that is used in many laboratories. First-principles theoretical calculations of Raman spectra are important because they elucidate the microscopic effects underlying Raman activity in these systems. These calculations are often performed using the canonical harmonic approximation, which cannot capture certain thermal changes in the Raman response. Anharmonic vibrational effects were recently found to play crucial roles in several materials, which motivates theoretical treatments of the Raman effect beyond harmonic phonons. While Raman spectroscopy from molecular dynamics (MD-Raman) is a well-established approach that includes anharmonic vibrations and further relevant thermal effects, MD-Raman computations were long considered to be computationally too expensive for practical materials computations. In this perspective article, we highlight that recent advances in the context of machine learning have now dramatically accelerated the involved computational tasks without sacrificing accuracy or predictive power. These recent developments highlight the increasing importance of MD-Raman and related methods as versatile tools for theoretical prediction and characterization of molecules and materials.

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来源期刊
Journal of Chemical Physics
Journal of Chemical Physics 物理-物理:原子、分子和化学物理
CiteScore
7.40
自引率
15.90%
发文量
1615
审稿时长
2 months
期刊介绍: The Journal of Chemical Physics publishes quantitative and rigorous science of long-lasting value in methods and applications of chemical physics. The Journal also publishes brief Communications of significant new findings, Perspectives on the latest advances in the field, and Special Topic issues. The Journal focuses on innovative research in experimental and theoretical areas of chemical physics, including spectroscopy, dynamics, kinetics, statistical mechanics, and quantum mechanics. In addition, topical areas such as polymers, soft matter, materials, surfaces/interfaces, and systems of biological relevance are of increasing importance. Topical coverage includes: Theoretical Methods and Algorithms Advanced Experimental Techniques Atoms, Molecules, and Clusters Liquids, Glasses, and Crystals Surfaces, Interfaces, and Materials Polymers and Soft Matter Biological Molecules and Networks.
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