4.7 Article

Machine learning rate constants of hydrogen abstraction reactions between ester and H atom

期刊

COMBUSTION AND FLAME
卷 255, 期 -, 页码 -

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.combustflame.2023.112901

关键词

Machine learning; Biodiesel; Combustion; Hydrogen abstraction; Rate constant

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The study predicts the rate constants of reactions between alkyl ester and H atom using machine learning methods, and the results show that the XGB-FNN model has better performance in predicting the rate constants in the temperature range of combustion. This machine learning method is important for accurate prediction of rate constants in larger systems.
The rate constants of hydrogen abstraction reactions of alkyl ester by H atom are crucial for optimiz-ing combustion reaction network and improving combustion efficiency of biodiesel. Due to the lack of experimental and theoretical rate coefficients data for some reactions -such as hydrogen abstraction of large biodiesel molecules by free radicals -machine learning provides a viable alternative to predict rate constants. In this study, three different machine learning (ML) methods -feedforward neural net-work (FNN), extreme gradient boosting (XGB) and XGB-FNN hybrid model -were used to predict rate constants of the reactions between alkyl ester and H atom. The rate constants of 41 reactions between H + CnH2n + 1COOCmH2m + 1 ( n = 0-5, m = 1, 2) were calculated by the Master Equation System Solver (MESS) program over a temperature range of 30 0-20 0 0 K for model training. The results showed that the XGB-FNN model with 8 descriptors has better overall performance than the other two ML methods. The average deviation of XGB-FNN model on the test set is 33.56% by performing leave one out (LOO) cross validations. The rate constants of the H + methyl decanoate (MD) reactions over a temperature range of 30 0 & SIM;20 0 0 K were predicted by the XGB-FNN model, which follow well the modified three-parameter Arrhenius equation and agree well with theoretical values, indicating that the hybrid XGB-FNN model is robust in predicting the rate constants of alkyl ester and H atom in the temperature range of combustion. The present ML method in this study is supposed to be able to provide accurate and affordable rate con-stants prediction of larger systems, the molecular sizes of which are comparable to those of the dominant components of real biodiesel. That is important for the development of biodiesel kinetic models.& COPY; 2023 The Combustion Institute. Published by Elsevier Inc. All rights reserved.

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