TY - JOUR
T1 - EM-HyChem
T2 - Bridging molecular simulations and chemical reaction neural network-enabled approach to modelling energetic material chemistry
AU - Chen, Xinzhe
AU - Xu, Yabei
AU - Wen, Mingjie
AU - Wang, Yongjin
AU - Pang, Kehui
AU - Wang, Shengkai
AU - Chu, Qingzhao
AU - Chen, Dongping
N1 - Publisher Copyright:
© 2025 The Combustion Institute
PY - 2025/5
Y1 - 2025/5
N2 - This study introduced a physics-inspired, top-down approach for modelling the reaction kinetics of energetic materials, based on observations of the time scale separation between pyrolysis and oxidation reactions. This modelling approach, named EM-HyChem, was developed with the inspiration of the original hybrid chemistry (HyChem) model, in which the reaction mechanism is divided into two submodels: pyrolysis and oxidation. In EM-HyChem, the key pyrolysis products and reaction mechanism are identified from the perspective of molecular fragments via geometry analysis, which is validated via neural network potential-enabled molecular dynamic simulations. A chemical reaction neural network (CRNN) model is applied to extract the rate parameters for the pyrolysis step from the reproduction of thermogravimetric experiments. An EM-HyChem model is later constructed by combining the pyrolysis step together with the oxidation models for the pyrolysis products. Two representative EMs, i.e., 1,3,5-trinitroperhydro-1,3,5-triazine (RDX) and 1,3,5,7-tetranitro-1,3,5,7-tetrazocane (HMX), are considered here to evaluate the performance of the EM-HyChem model. The predicted burning rates across a wide range of pressure conditions (1–100 atm) are in good agreement with the experimental measurements and the results of other models. Further agreement among the temperature profile, melt layer thickness and surface temperatures support the EM-HyChem model.
AB - This study introduced a physics-inspired, top-down approach for modelling the reaction kinetics of energetic materials, based on observations of the time scale separation between pyrolysis and oxidation reactions. This modelling approach, named EM-HyChem, was developed with the inspiration of the original hybrid chemistry (HyChem) model, in which the reaction mechanism is divided into two submodels: pyrolysis and oxidation. In EM-HyChem, the key pyrolysis products and reaction mechanism are identified from the perspective of molecular fragments via geometry analysis, which is validated via neural network potential-enabled molecular dynamic simulations. A chemical reaction neural network (CRNN) model is applied to extract the rate parameters for the pyrolysis step from the reproduction of thermogravimetric experiments. An EM-HyChem model is later constructed by combining the pyrolysis step together with the oxidation models for the pyrolysis products. Two representative EMs, i.e., 1,3,5-trinitroperhydro-1,3,5-triazine (RDX) and 1,3,5,7-tetranitro-1,3,5,7-tetrazocane (HMX), are considered here to evaluate the performance of the EM-HyChem model. The predicted burning rates across a wide range of pressure conditions (1–100 atm) are in good agreement with the experimental measurements and the results of other models. Further agreement among the temperature profile, melt layer thickness and surface temperatures support the EM-HyChem model.
KW - Burning rate
KW - Chemical reaction neural network
KW - Energetic materials
KW - Kinetic model
KW - Neural network potential
UR - http://www.scopus.com/inward/record.url?scp=85217940882&partnerID=8YFLogxK
U2 - 10.1016/j.combustflame.2025.114065
DO - 10.1016/j.combustflame.2025.114065
M3 - Article
AN - SCOPUS:85217940882
SN - 0010-2180
VL - 275
JO - Combustion and Flame
JF - Combustion and Flame
M1 - 114065
ER -