Neural Network Potentials: A Concise Overview of Methods.

IF 11.7 1区 化学 Q1 CHEMISTRY, PHYSICAL
Emir Kocer, Tsz Wai Ko, Jörg Behler
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引用次数: 59

Abstract

In the past two decades, machine learning potentials (MLPs) have reached a level of maturity that now enables applications to large-scale atomistic simulations of a wide range of systems in chemistry, physics, and materials science. Different machine learning algorithms have been used with great success in the construction of these MLPs. In this review, we discuss an important group of MLPs relying on artificial neural networks to establish a mapping from the atomic structure to the potential energy. In spite of this common feature, there are important conceptual differences among MLPs, which concern the dimensionality of the systems, the inclusion of long-range electrostatic interactions, global phenomena like nonlocal charge transfer, and the type of descriptor used to represent the atomic structure, which can be either predefined or learnable. A concise overview is given along with a discussion of the open challenges in the field.

神经网络电位:方法的简明概述。
在过去的二十年中,机器学习潜力(mlp)已经达到了一个成熟的水平,现在可以应用于化学,物理和材料科学中广泛系统的大规模原子模拟。不同的机器学习算法已经在这些mlp的构建中获得了巨大的成功。在这篇综述中,我们讨论了一组重要的mlp依赖于人工神经网络建立从原子结构到势能的映射。尽管有这些共同的特征,但mlp之间存在重要的概念差异,这些差异涉及系统的维数、远程静电相互作用的包含、非局部电荷转移等全局现象,以及用于表示原子结构的描述符类型,这些描述符可以是预定义的,也可以是可学习的。简要概述并讨论了该领域的开放挑战。
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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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