Molecule Empowerment and Crystal Desensitization: A Multilevel Structure–Property Analysis toward Designing High-Energy Low-Sensitivity Layered Energetic Materials

材料科学 灵敏度(控制系统) 氢键 分子间力 堆积 化学物理 纳米技术 键离解能 分子 离解(化学) 物理化学 化学 电子工程 有机化学 工程类
作者
Xiaokai He,Chao Chen,Zhixiang Zhang,Tao Yu,Linyuan Wen,Yilin Cao,Yingzhe Liu
出处
期刊:ACS Applied Materials & Interfaces [American Chemical Society]
卷期号:16 (36): 47429-47442 被引量:6
标识
DOI:10.1021/acsami.4c07344
摘要

Layered energetic materials (LEMs) can effectively balance energy and mechanical sensitivity, making them a current research focus in the field of energetic materials. However, the influence of the layered stacking pattern on impact sensitivity is still unclear, leading to the lack of advanced design strategies for high-energy low-sensitivity LEMs. Herein, we first utilize novel indicators such as maximum plane separation and hydrogen bond dimension to perform high-throughput screening on over 106 candidate structures, resulting in 17 target crystals. A systematic analysis was then conducted on the relationships between the bond dissociation energy (BDE) of the weakest energy-storing bond at the molecular level, the intralayer hydrogen bond energy (HBE), and the sliding energy barrier (SEB) at the crystal level with impact sensitivity. The findings suggest that a material can have low sensitivity only if at least two of the three properties perform well, and the interlayer sliding resistance can be reduced by enhancing the intermolecular hydrogen bond interactions, which reasonably explains the experimental phenomena. More importantly, we developed a prediction model for the impact sensitivity of LEMs with a coefficient of determination of 0.88. Additionally, factors affecting HBE and SEB were identified, and a linear model was established based on molecular-level feature variables. Finally, a new strategy for designing high-energy low-sensitivity LEMs was proposed, namely, empowerment at the molecular scale and desensitization at the crystal scale. This study integrates high-throughput screening, multilevel structure–property relationship analysis, and mathematical model construction, offering new perspectives for the development of novel high-energy and low-sensitivity energetic materials.
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