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      High precision deep-learning model combined with high-throughput screening to discover fused [5,5] biheterocyclic energetic materials with excellent comprehensive properties†

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      a , a , , b , , b , a , a
      RSC Advances
      The Royal Society of Chemistry

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          Abstract

          Finding novel energetic materials with good comprehensive performance has always been challenging because of the low efficiency in conventional trial and error experimental procedure. In this paper, we established a deep learning model with high prediction accuracy using embedded features in Directed Message Passing Neural Networks. The model combined with high-throughput screening was shown to facilitate rapid discovery of fused [5,5] biheterocyclic energetic materials with high energy and excellent thermal stability. Density Functional Theory (DFT) calculations proved that the performances of the targeting molecules are consistent with the predicted results from the deep learning model. Furthermore, 6,7-trinitro-3 H-pyrrolo[1,2- b][1,2,4]triazo-5-amine with both good detonation properties and thermal stability was screened out, whose crystal structure and intermolecular interactions were also analyzed.

          Abstract

          In this study, we used D-MPNN embedded with features to rapid discovery of 6,7-trinitro-3 H-pyrrolo[1,2- b][1,2,4]triazo-5-amine with high energy and excellent thermal stability. DFT calculations prove the performances of the targeting molecule.

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          Most cited references2

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          Gaussian 16, Revision A.03

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            Proceedings of the 34th International Conference on Machine Learning

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              Author and article information

              Journal
              RSC Adv
              RSC Adv
              RA
              RSCACL
              RSC Advances
              The Royal Society of Chemistry
              2046-2069
              29 July 2024
              26 July 2024
              29 July 2024
              : 14
              : 33
              : 23672-23682
              Affiliations
              [a ] School of Chemical Engineering and Technology, Xi'an Jiaotong University Xi'an 710049 China yang.fs@ 123456mail.xjtu.edu.cn
              [b ] Research Center of Energetic Material Genome Science, Institute of Chemical Materials, China Academy of Engineering Physics (CAEP) Mianyang 621900 P. R. China zhangwq-cn@ 123456caep.cn
              Author information
              https://orcid.org/0000-0002-8598-9625
              https://orcid.org/0000-0002-2766-5040
              Article
              d4ra03233k
              10.1039/d4ra03233k
              11284349
              39077321
              95f3cea7-c885-4e6c-98e1-7f54f80c7176
              This journal is © The Royal Society of Chemistry
              History
              : 1 May 2024
              : 16 July 2024
              Page count
              Pages: 11
              Funding
              Funded by: National Natural Science Foundation of China, doi 10.13039/501100001809;
              Award ID: 22375190
              Categories
              Chemistry
              Custom metadata
              Paginated Article

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