Kinetic models of HMX decomposition via chemical reaction neural network

被引:0
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作者
Sun, Wei [1 ]
Xu, Yabei [1 ]
Chen, Xinzhe [1 ]
Chu, Qingzhao [1 ]
Chen, Dongping [1 ]
机构
[1] State Key Laboratory of Explosion Science and Safety Protection, Beijing Institute of Technology, Beijing,100081, China
关键词
The work is funded by the State Key Laboratory of Explosion Science and Safety Protection (Grant No. ZDKT21-01). The authors also acknowledge the support from the National Natural Science Foundation of China (Grant No. 52106130) and the Open Research Fund Program of Science and Technology on Aerospace Chemical Power Laboratory (STACPL320221B04).The work is funded by the State Key Laboratory of Explosion Science and Safety Protection (Grant No. ZDKT21\u201301) and Science and Technology Innovation Program of Beijing Institute of Technology (2022CX01028). The authors also acknowledge the support from the National Natural Science Foundation of China (Grant No. 52106130) and the Open Research Fund Program of Science and Technology on Aerospace Chemical Power Laboratory (STACPL320221B04);
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摘要
1,3,5,7-Tetranitro-1,3,5,7-tetrazocane (HMX) is commonly used in solid propellants and explosives as energetic materials. The study of its kinetics and decomposition mechanism is of great significance to its application in the aerospace industries. This work investigates the thermal decomposition of HMX based on the combined thermogravimetric (TG) measurements and chemical reaction neural network (CRNN). Two compact kinetic models for HMX are introduced, with one consisting of four substances and a single global reaction (4–1 model) and the other consisting of four substances and four reactions (4–4 model). In the 4–1 model, the calculated activation energy is 328.44 kJ·mol−1, which agrees with the experimental value. As for the 4–4 model, the substances and reactions are assigned based on a skeleton mechanism involving reactions of N-N and C-N bond cleavage and HONO elimination. Moreover, the catalytic effects of TiO2 and Al2O3 on HMX are well simulated using the aforementioned kinetic models. The CRNN models can reproduce the peak temperature with a reduced activation energy, but the initial decomposition temperature is overestimated owing to the complex nature of catalytic impact. This work presents the application of the CRNN model to obtain a decomposition mechanism of HMX, highlighting its efficacy in accurately capturing the thermal decomposition behavior. The potential extension of CRNN to kinetic modeling of other energetic materials is anticipated in future studies. © 2024 Elsevier B.V.
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