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机器学习在化学反应中的应用。

Machine Learning for Chemical Reactions.

机构信息

Department of Chemistry, University of Basel, Klingelbergstrasse 80, 4056 Basel, Switzerland.

Department of Chemistry, Brown University, Providence, Rhode Island 02912, United States.

出版信息

Chem Rev. 2021 Aug 25;121(16):10218-10239. doi: 10.1021/acs.chemrev.1c00033. Epub 2021 Jun 7.

Abstract

Machine learning (ML) techniques applied to chemical reactions have a long history. The present contribution discusses applications ranging from small molecule reaction dynamics to computational platforms for reaction planning. ML-based techniques can be particularly relevant for problems involving both computation and experiments. For one, Bayesian inference is a powerful approach to develop models consistent with knowledge from experiments. Second, ML-based methods can also be used to handle problems that are formally intractable using conventional approaches, such as exhaustive characterization of state-to-state information in reactive collisions. Finally, the explicit simulation of reactive networks as they occur in combustion has become possible using machine-learned neural network potentials. This review provides an overview of the questions that can and have been addressed using machine learning techniques, and an outlook discusses challenges in this diverse and stimulating field. It is concluded that ML applied to chemistry problems as practiced and conceived today has the potential to transform the way with which the field approaches problems involving chemical reactions, in both research and academic teaching.

摘要

机器学习(ML)技术在化学反应中的应用历史悠久。本综述讨论了从小分子反应动力学到反应规划计算平台的应用。基于 ML 的技术对于涉及计算和实验的问题特别相关。一方面,贝叶斯推断是一种强大的方法,可以开发与实验知识一致的模型。其次,基于 ML 的方法也可用于处理使用传统方法难以处理的问题,例如反应碰撞中状态到状态信息的详尽特征化。最后,使用机器习得的神经网络势,明确模拟燃烧中发生的反应网络成为可能。本文综述了可以使用机器学习技术解决的问题,并展望了这一多样化和令人兴奋的领域的挑战。得出的结论是,目前应用于化学问题的 ML 有可能改变该领域处理涉及化学反应的问题的方式,无论是在研究还是学术教学中。

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