Accelerating the discovery of energetic melt-castable materials by a high-throughput virtual screening and experimental approach

Siwei Song, Fang Chen, Yi Wang, Kangcai Wang, Mi Yan, Qinghua Zhang

科研成果: 期刊稿件文章同行评审

55 引用 (Scopus)

摘要

With the growth of chemical data, computation power and algorithms, machine learning-assisted high-throughput virtual screening (ML-assisted HTVS) is revolutionizing the research paradigm of new materials. Herein, a combined ML-assisted HTVS and experimental approach was applied to accelerate the search for energetic melt-castable materials with promising properties. The ML-assisted HTVS system is composed of high-throughput molecular generation (in a heuristic enumeration method) and five machine learning-based property prediction models (including density, melting point, decomposition temperature, detonation velocity, and detonation pressure). Using this system, we rapidly targeted 136 promising candidates from a generated molecular space containing 3892 molecules. With extensive efforts on experimental synthesis, eight new energetic melt-castable materials (MC-1 to MC-8) were obtained, and their measured properties were in good agreement with the predicted results. This work verifies the effectiveness of the combined ML-assisted HTVS and experimental approach for the accelerated discovery of energetic melt-castable materials.

源语言英语
页(从-至)21723-21731
页数9
期刊Journal of Materials Chemistry A
9
38
DOI
出版状态已出版 - 14 10月 2021
已对外发布

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