Machine Learning for Molecular Simulation.

IF 11.7 1区 化学 Q1 CHEMISTRY, PHYSICAL
Frank Noé, Alexandre Tkatchenko, Klaus-Robert Müller, Cecilia Clementi
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引用次数: 430

Abstract

Machine learning (ML) is transforming all areas of science. The complex and time-consuming calculations in molecular simulations are particularly suitable for an ML revolution and have already been profoundly affected by the application of existing ML methods. Here we review recent ML methods for molecular simulation, with particular focus on (deep) neural networks for the prediction of quantum-mechanical energies and forces, on coarse-grained molecular dynamics, on the extraction of free energy surfaces and kinetics, and on generative network approaches to sample molecular equilibrium structures and compute thermodynamics. To explain these methods and illustrate open methodological problems, we review some important principles of molecular physics and describe how they can be incorporated into ML structures. Finally, we identify and describe a list of open challenges for the interface between ML and molecular simulation.

分子模拟的机器学习。
机器学习(ML)正在改变所有科学领域。分子模拟中复杂而耗时的计算特别适合ML革命,并且已经受到现有ML方法应用的深刻影响。在这里,我们回顾了最近用于分子模拟的ML方法,特别关注用于预测量子力学能量和力的(深度)神经网络,粗粒度分子动力学,自由能表面和动力学的提取,以及用于样本分子平衡结构和计算热力学的生成网络方法。为了解释这些方法并说明开放的方法学问题,我们回顾了分子物理学的一些重要原理,并描述了如何将它们纳入ML结构。最后,我们确定并描述了ML和分子模拟之间界面的开放挑战列表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
28.00
自引率
0.00%
发文量
21
期刊介绍: The Annual Review of Physical Chemistry has been published since 1950 and is a comprehensive resource for significant advancements in the field. It encompasses various sub-disciplines such as biophysical chemistry, chemical kinetics, colloids, electrochemistry, geochemistry and cosmochemistry, chemistry of the atmosphere and climate, laser chemistry and ultrafast processes, the liquid state, magnetic resonance, physical organic chemistry, polymers and macromolecules, and others.
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