Machine learning (ML) is used to provide reactions rates appropriate for models of low temperature plasmas with a focus on A + B → C + D binary chemical reactions. The regression model is trained on data extracted from the QBD, KIDA, NFRI and UfDA databases. The regression model used a variety of data on the reactant and product species, some of which also had to be estimated using ML. The final model is a voting regressor comprising three distinct optimized regression models: a support vector regressor, random forest regressor and a gradient-boosted trees regressor model; this model is made freely available via a GitHub repository. As a sample use case, the ML results are used to augment the chemistry of a BCl3/H2 gas mixture.
CITATION STYLE
Hanicinec, M., Mohr, S., & Tennyson, J. (2023). A regression model for plasma reaction kinetics. Journal of Physics D: Applied Physics, 56(37). https://doi.org/10.1088/1361-6463/acd390
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