State Key Laboratory of Explosion Science and Technology, Beijing, 100081, China.
Beijing Institute of Electronic System Engineering, Beijing, 100143, China.
Phys Chem Chem Phys. 2022 Nov 2;24(42):25885-25894. doi: 10.1039/d2cp03511a.
A neural network potential (NNP) is developed to investigate the complex reaction dynamics of 1,3,5-trinitro-1,3,5-triazine (RDX) thermal decomposition. Our NNP model is proven to possess good computational efficiency and retain the accuracy, which allows the investigation of the entire decomposition process of bulk RDX crystals from an atomic perspective. A series of molecular dynamics (MD) simulations are performed on the NNP to calculate the physical and chemical properties of the RDX crystal. The results show that the NNP can accurately describe the physical properties of RDX crystals, such as the cell parameters and the equation of state. The simulations of RDX thermal decomposition reveal that the NNP could capture the evolution of species at accuracy. The complex reaction network was established, and a reaction mechanism of RDX decomposition was provided. The N-N homolysis is the dominant channel, which cannot be observed in previous DFT studies of isolated RDX molecule. In addition, the H abstraction reaction by NO is found to be the critical pathway for NO and HO formation, while the HONO elimination is relatively weak. The NNP gives an atomic insight into the complex reaction dynamics of RDX and can be extended to investigate the reaction mechanism of novel energetic materials.
我们开发了一种神经网络势(NNP)来研究 1,3,5-三硝基-1,3,5-三嗪(RDX)热分解的复杂反应动力学。我们的 NNP 模型被证明具有良好的计算效率,并保持准确性,这使得可以从原子角度研究大块 RDX 晶体的整个分解过程。我们在 NNP 上进行了一系列分子动力学(MD)模拟,以计算 RDX 晶体的物理和化学性质。结果表明,NNP 可以准确描述 RDX 晶体的物理性质,如晶胞参数和状态方程。RDX 热分解的模拟表明,NNP 可以准确捕捉物种的演化。我们建立了复杂的反应网络,并提供了 RDX 分解的反应机制。NNP 给出了 RDX 复杂反应动力学的原子洞察力,并可扩展用于研究新型含能材料的反应机制。