Cyclic Random Graphs Predicting Giant Molecules in Hydrocarbon Pyrolysis

ORAL

Abstract

Hydrocarbon pyrolysis is a complex chemical reaction system at extreme temperature and pressure conditions involving large numbers of chemical reactions and chemical species. Only two kinds of atoms are involved: carbons and hydrogens. Its effective description and predictions for new settings are challenging due to the complexity of the system and the high computational cost of generating data by molecular dynamics simulations. On the other hand, the ensemble of molecules present at any moment and the carbon skeletons of these molecules can be viewed as random graphs. Therefore, an adequate random graph model can predict molecular composition at a low computational cost. We propose a random graph model featuring disjoint loops and assortativity correction and a method for learning input distributions from molecular dynamics data. The model uses works of Karrer and Newman (2010) and Newman (2002) as building blocks. We demonstrate that the proposed model accurately predicts the size distribution for small molecules as well as the size distribution of the largest molecule in reaction systems at the pressure of 40.5 GPa, temperature range of 3200K–5000K, and H/C ratio range from 2 as in cyclohexane through 4 as in methane. This random graph model predicts the formation of a giant molecule of size O(N) where N is the number of atoms as a function of the H/C ratio.

*This material is based upon work supported by the National Science Foundation Graduate Research Fellowship Program under Grant No. DGE 2236417. This work was partially supported by AFOSR MURI grant FA9550-20-1-0397.

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Publication: Ruth, Perrin E., Vincent Dufour-Decieux, Christopher Moakler, and Maria Cameron. "Cyclic random graph models predicting giant molecules in hydrocarbon pyrolysis." arXiv preprint arXiv:2409.19141 (2024).

Presenters

  • Perrin Ruth

    • University of Maryland, College Park

Authors

  • Perrin Ruth

    • University of Maryland, College Park
  • Maria Cameron

    • Department of Mathematics, University of Maryland, College Park
  • Vincent Dufour-Decieux

    • Energy & Process Systems Engineering, ETH Zurich
  • Christopher Moakler

    • University of North Carolina at Chapel Hill