Multiscale Reactive
Model for 1,3,5-Triamino-2,4,6-trinitrobenzene
Inferred by Reactive MD Simulations and Unsupervised Learning
Posted on 2023-08-02 - 03:14
When high-energy-density materials are subjected to thermal
or
mechanical insults at extreme conditions (shock loading), a coupled
response between the thermo-mechanical and chemical behaviors is systematically
induced. We develop a reaction model for the fast chemistry of 1,3,5-triamino-2,4,6-trinitrobenzene
(TATB) at the mesoscopic scale, where the chemical behavior is determined
by underlying microscopic reactive simulations. The slow carbon cluster
formation is not discussed in the present work. All-atom reactive
molecular dynamics (MD) simulations are performed with the ReaxFF
potential, and a reduced-order chemical kinetics model for TATB is
fitted to isothermal and adiabatic simulations of single crystal chemical
decomposition. Unsupervised machine learning techniques based on non-negative
matrix factorization are applied to MD trajectories to model the decomposition
kinetics of TATB in terms of a four-component model. The associated
heats of reaction are fit to the temperature evolution from adiabatic
decomposition trajectories. Using a chemical species analysis, we
show that non-negative matrix factorization captures the main chemical
decomposition steps of TATB and provides an accurate estimation of
their evolution with temperature. The final analytical formulation,
coupled to a diffusion term, is incorporated into a continuum formalism,
and simulation results are compared one-to-one against MD simulations
of 1D reaction propagation along different crystallographic directions
and with different initial temperatures. A good agreement is found
for both the temporal and spatial evolution of the temperature field.
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Lafourcade, P.; Maillet, J.-B.; Roche, J.; Sakano, M.; Hamilton, B. W.; Strachan, A. (1753). Multiscale Reactive
Model for 1,3,5-Triamino-2,4,6-trinitrobenzene
Inferred by Reactive MD Simulations and Unsupervised Learning. ACS Publications. Collection. https://doi.org/10.1021/acs.jpcc.3c02678Â