TY - JOUR
T1 - Machine-Learning Assisted Screening of Energetic Materials
AU - Kang, Peng
AU - Liu, Zhongli
AU - Abou-Rachid, Hakima
AU - Guo, Hong
N1 - Publisher Copyright:
Copyright © 2020 American Chemical Society.
PY - 2020/7/2
Y1 - 2020/7/2
N2 - In this work, machine learning (ML), materials informatics (MI), and thermochemical data are combined to screen potential candidates of energetic materials. To directly characterize energetic performance, the heat of explosion He is used as the target property. The critical descriptors of cohesive energy, averaged over all constituent elements and the oxygen balance, are found by forward stepwise selection from a large number of possible descriptors. With them and a theoretically labeled He training data set, a satisfactory surrogate ML model is trained. The ML model is applied to large databases ICSD and PubChem to predict He. At the gross-level filtering by the ML model, 2732 molecular candidates based on carbon, hydrogen, nitrogen, and oxygen (CHNO) with high He values are predicted. Afterward, a fine-level thermochemical screening is carried out on the 2732 materials, resulting in 262 candidates with TNT equivalent power index Pe(TNT) greater than 1.5. Raising Pe(TNT) further to larger than 1.8, 29 potential candidates are found from the 2732 materials, all are new to the current reservoir of well-known energetic materials.
AB - In this work, machine learning (ML), materials informatics (MI), and thermochemical data are combined to screen potential candidates of energetic materials. To directly characterize energetic performance, the heat of explosion He is used as the target property. The critical descriptors of cohesive energy, averaged over all constituent elements and the oxygen balance, are found by forward stepwise selection from a large number of possible descriptors. With them and a theoretically labeled He training data set, a satisfactory surrogate ML model is trained. The ML model is applied to large databases ICSD and PubChem to predict He. At the gross-level filtering by the ML model, 2732 molecular candidates based on carbon, hydrogen, nitrogen, and oxygen (CHNO) with high He values are predicted. Afterward, a fine-level thermochemical screening is carried out on the 2732 materials, resulting in 262 candidates with TNT equivalent power index Pe(TNT) greater than 1.5. Raising Pe(TNT) further to larger than 1.8, 29 potential candidates are found from the 2732 materials, all are new to the current reservoir of well-known energetic materials.
UR - https://www.scopus.com/pages/publications/85087533545
U2 - 10.1021/acs.jpca.0c02647
DO - 10.1021/acs.jpca.0c02647
M3 - 文章
C2 - 32511924
AN - SCOPUS:85087533545
SN - 1089-5639
VL - 124
SP - 5341
EP - 5351
JO - Journal of Physical Chemistry A
JF - Journal of Physical Chemistry A
IS - 26
ER -