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Exhaustive state-to-state cross sections for reactive molecular collisions from importance sampling simulation and a neural network representation

Koner, Debasish and Unke, Oliver T. and Boe, Kyle and Bemish, Raymond J. and Meuwly, Markus. (2019) Exhaustive state-to-state cross sections for reactive molecular collisions from importance sampling simulation and a neural network representation. Journal of Chemical Physics, 150 (21). p. 211101.

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Official URL: https://edoc.unibas.ch/94198/

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Abstract

High-temperature, reactive gas flow is inherently nonequilibrium in terms of energy and state population distributions. Modeling such con- ditions is challenging even for the smallest molecular systems due to the extremely large number of accessible states and transitions between them. Here, neural networks (NNs) trained on explicitly simulated data are constructed and shown to provide quantitatively realistic descrip- tions which can be used in mesoscale simulation approaches such as Direct Simulation Monte Carlo to model gas flow at the hypersonic regime. As an example, the state-to-state cross sections for N( 4 S) + NO( 2 Π ) → O( 3 P) + N 2 (X 1 Σ + g ) are computed from quasiclassical trajectory (QCT) simulations. By training NNs on a sparsely sampled noisy set of state-to-state cross sections, it is demonstrated that independently generated reference data are predicted with high accuracy. State-specific and total reaction rates as a function of temperature from the NN are in quantitative agreement with explicit QCT simulations and confirm earlier simulations, and the final state distributions of the vibra- tional and rotational energies agree as well. Thus, NNs trained on physical reference data can provide a viable alternative to computationally demanding explicit evaluation of the microscopic information at run time. This will considerably advance the ability to realistically model nonequilibrium ensembles for network-based simulations.
Faculties and Departments:05 Faculty of Science > Departement Chemie > Chemie > Physikalische Chemie (Meuwly)
UniBasel Contributors:Meuwly, Markus
Item Type:Article, refereed
Article Subtype:Research Article
Publisher:AIP Publishing
ISSN:0021-9606
e-ISSN:1089-7690
Note:Publication type according to Uni Basel Research Database: Journal article
Language:English
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edoc DOI:
Last Modified:03 Apr 2023 08:44
Deposited On:03 Apr 2023 08:44

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