Machine learning-assisted quantitative prediction of thermal decomposition temperatures of energetic materials and their thermal stability analysis

IF 3.3 Q2 CHEMISTRY, MULTIDISCIPLINARY Energetic Materials Frontiers Pub Date : 2023-09-01 DOI:10.1016/j.enmf.2023.09.004
Zhi-xiang Zhang, Yi-lin Cao, Chao Chen, Lin-yuan Wen, Yi-ding Ma, Bo-zhou Wang, Ying-zhe Liu
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Abstract

In this study, machine learning (ML)-assisted regression modeling was conducted to predict the thermal decomposition temperatures and explore the factors that correlate with the thermal stability of energetic materials (EMs). The modeling was performed based on a dataset consisting of 885 various compounds using linear and nonlinear algorithms. The tree-based models established demonstrated acceptable predictive abilities, yielding a low mean absolute error (MAE) of 31°C. By analyzing the dataset through hierarchical classification, this study insightfully identified the factors affecting EMs’ thermal decomposition temperatures, with the overall accuracy improved through targeted modeling. The SHapley Additive exPlanations (SHAP) analysis indicated that descriptors such as BCUT2D, PEOE_VSA, MolLog_P, and TPSA played a significant role, demonstrating that the thermal decomposition process is influenced by multiple factors relating to the composition, electron distribution, chemical bond properties, and substituent type of molecules. Additionally, descriptors such as Carbon_contents and Oxygen_Balance proposed for characterizing EMs showed strong linear correlations with thermal decomposition temperatures. The trends of their SHAP values indicated that the most suitable ranges of Carbon_contents and Oxygen_Balance were 0.2–0.35 and −65 to −55, respectively. Overall, the study shows the potential of ML models for decomposition temperature prediction of EMs and provides insights into the characteristics of molecular descriptors.

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含能材料热分解温度的机器学习辅助定量预测及其热稳定性分析
本研究采用机器学习(ML)辅助回归模型对含能材料(EMs)的热分解温度进行预测,并探讨与热稳定性相关的因素。建模是基于一个由885种不同化合物组成的数据集,使用线性和非线性算法进行的。建立的基于树的模型显示出可接受的预测能力,平均绝对误差(MAE)较低,为31°C。本研究通过分层分类对数据集进行分析,深刻识别出影响EMs热分解温度的因素,并通过有针对性的建模提高了整体精度。SHapley Additive exPlanations (SHAP)分析表明,BCUT2D、PEOE_VSA、MolLog_P和TPSA等描述符在热分解过程中发挥了重要作用,表明热分解过程受到分子组成、电子分布、化学键性质和取代基类型等多种因素的影响。此外,碳含量(Carbon_contents)和氧平衡(Oxygen_Balance)等描述符与热分解温度呈强线性相关。其SHAP值的变化趋势表明,碳含量和氧平衡的最适宜范围分别为0.2 ~ 0.35和- 65 ~ - 55。总的来说,该研究显示了ML模型在em分解温度预测中的潜力,并提供了对分子描述符特征的见解。
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来源期刊
Energetic Materials Frontiers
Energetic Materials Frontiers Materials Science-Materials Science (miscellaneous)
CiteScore
6.90
自引率
0.00%
发文量
42
审稿时长
12 weeks
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