Machine-learning prediction of infrared spectra of interstellar polycyclic aromatic hydrocarbons
Peter Kovacs,
Xiaosi Zhu,
Jesus Carrete
et al.
Abstract:We design and train a neural network (NN) model to efficiently predict the infrared spectra of interstellar polycyclic aromatic hydrocarbons (PAHs) with a computational cost many orders of magnitude lower than what a first-principles calculation would demand. The input to the NN is based on the Morgan fingerprints extracted from the skeletal formulas of the molecules and does not require precise geometrical information such as interatomic distances. The model shows excellent predictive skill for out-of-sample … Show more
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