离群值
预测建模
人工智能
试验装置
理论(学习稳定性)
一般化
分子描述符
计算机科学
起爆
分解
回归
机器学习
特征选择
线性回归
数据挖掘
数学
数量结构-活动关系
化学
统计
爆炸物
数学分析
有机化学
作者
Junnan Wu,Siwei Song,Xiaolan Tian,Yi Wang,Xiujuan Qi
标识
DOI:10.1016/j.enmf.2023.09.001
摘要
Exploring the application of machine learning (ML) in energetic materials (EMs) has been a hot research topic. Accordingly, the prediction of the detonation properties of EMs using ML methods has attracted much attention. However, the predictive models for the thermal decomposition temperatures (Td) of EMs have been scarcely reported. Furthermore, the small datasets used in these reports lead to a weak generalization ability of the predictive models. This study created a dataset containing 1022 energetic molecules with Td values of 38–425 °C and determined an optimal predictive model through training. The gradient boost machine for regression (GBR) model yielded a coefficient of determination (R2) of 0.65 and a mean absolute error (MAE) of 27.7 for the test set. This study further explored critical features, determining that the prediction accuracy of the models was significantly influenced by descriptors representing molecular bond stability (i.e., the BCUT metrics) and atomic composition (i.e., the Molecular ID). Finally, the analysis of the outlier structure indicated that the model accuracy can be further improved by incorporating features related to molecular interactions. The results of this study help gain a deep understanding of the application of ML in the prediction of EM properties, particularly in dataset construction and feature selection.
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