反应速率常数
羟基自由基
氢原子萃取
人工神经网络
燃烧
化学
工作(物理)
抽象
计算机科学
氢
热力学
计算化学
机器学习
激进的
物理化学
有机化学
动力学
物理
认识论
哲学
量子力学
作者
Junhui Lu,Huimin Zhang,Jinhui Yu,Dezun Shan,Ji Qi,Jiawen Chen,Hongwei Song,Minghui Yang
标识
DOI:10.1021/acs.jcim.1c00809
摘要
The hydrogen abstraction reactions of the hydroxyl radical with alkanes play an important role in combustion chemistry and atmospheric chemistry. However, site-specific reaction constants are difficult to obtain experimentally and theoretically. Recently, machine learning has proved its ability to predict chemical properties. In this work, a machine learning approach is developed to predict the temperature-dependent site-specific rate constants of the title reactions. Multilayered neural network (NN) models are developed by training the site-specific rate constants of 11 reactions, and several schemes are designed to improve the prediction accuracy. The results show that the proposed NN models are robust in predicting the site-specific and overall rate constants.
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