Unke Oliver T, Chmiela Stefan, Sauceda Huziel E, Gastegger Michael, Poltavsky Igor, Schütt Kristof T, Tkatchenko Alexandre, Müller Klaus-Robert
Machine Learning Group, Technische Universität Berlin, 10587 Berlin, Germany.
DFG Cluster of Excellence "Unifying Systems in Catalysis" (UniSysCat), Technische Universität Berlin, 10623 Berlin, Germany.
Chem Rev. 2021 Aug 25;121(16):10142-10186. doi: 10.1021/acs.chemrev.0c01111. Epub 2021 Mar 11.
In recent years, the use of machine learning (ML) in computational chemistry has enabled numerous advances previously out of reach due to the computational complexity of traditional electronic-structure methods. One of the most promising applications is the construction of ML-based force fields (FFs), with the aim to narrow the gap between the accuracy of methods and the efficiency of classical FFs. The key idea is to learn the statistical relation between chemical structure and potential energy without relying on a preconceived notion of fixed chemical bonds or knowledge about the relevant interactions. Such universal ML approximations are in principle only limited by the quality and quantity of the reference data used to train them. This review gives an overview of applications of ML-FFs and the chemical insights that can be obtained from them. The core concepts underlying ML-FFs are described in detail, and a step-by-step guide for constructing and testing them from scratch is given. The text concludes with a discussion of the challenges that remain to be overcome by the next generation of ML-FFs.
近年来,机器学习(ML)在计算化学中的应用取得了诸多进展,这些进展是传统电子结构方法因计算复杂性而无法实现的。最有前景的应用之一是构建基于机器学习的力场(FFs),目的是缩小量子力学方法的准确性与经典力场效率之间的差距。关键思想是学习化学结构与势能之间的统计关系,而不依赖于固定化学键的先入之见或相关相互作用的知识。这种通用的机器学习近似原则上仅受用于训练它们的参考数据的质量和数量的限制。本文综述了基于机器学习的力场的应用以及从中可以获得的化学见解。详细描述了基于机器学习的力场的核心概念,并给出了从零开始构建和测试它们的分步指南。本文最后讨论了下一代基于机器学习的力场仍需克服的挑战。