SCI和EI收录∣中国化工学会会刊

中国化学工程学报 ›› 2025, Vol. 84 ›› Issue (8): 266-273.DOI: 10.1016/j.cjche.2025.06.005

• Full Length Article • 上一篇    下一篇

Molecular design of high energy density fuels from coal-to-liquids

Haowei Li1, Bingzhu Min1, Yaling Gong1, Linsheng Li1, Xingbao Wang1, Yimeng Zhu2, Wenying Li1   

  1. 1. State Key Laboratory of Clean and Efficient Coal Utilization, Taiyuan University of Technology, Taiyuan 030024, China;
    2. Kyland Technology Co., Ltd., Beijing 100144, China
  • 收稿日期:2025-01-14 修回日期:2025-05-27 接受日期:2025-06-02 出版日期:2025-08-28 发布日期:2025-06-14
  • 通讯作者: Xingbao Wang,E-mail:wangxingbao@tyut.edu.cn;Wenying Li,E-mail:ying@tyut.edu.cn
  • 基金资助:
    The authors are very grateful for the National Natural Science Foundation of China (22178243 and 22038008).

Molecular design of high energy density fuels from coal-to-liquids

Haowei Li1, Bingzhu Min1, Yaling Gong1, Linsheng Li1, Xingbao Wang1, Yimeng Zhu2, Wenying Li1   

  1. 1. State Key Laboratory of Clean and Efficient Coal Utilization, Taiyuan University of Technology, Taiyuan 030024, China;
    2. Kyland Technology Co., Ltd., Beijing 100144, China
  • Received:2025-01-14 Revised:2025-05-27 Accepted:2025-06-02 Online:2025-08-28 Published:2025-06-14
  • Contact: Xingbao Wang,E-mail:wangxingbao@tyut.edu.cn;Wenying Li,E-mail:ying@tyut.edu.cn
  • Supported by:
    The authors are very grateful for the National Natural Science Foundation of China (22178243 and 22038008).

摘要: Direct coal liquefaction products offer a considerable quantity of cycloalkanes, which are the valuable candidates for making the high energy density fuels. The creation of such fuels depends on designing molecular structures and calculating their properties, which can be expedited with computer-aided techniques. In this study, a dataset containing 367 fuel molecules was constructed based on the analysis of direct coal liquefied oil. Three convolutional neural network property prediction models have been created based on molecular structure-physical and chemical property data from the library. All the models have good fitting ability with R2 values above 0.97. Then, a variational autoencoder generation model has been established using the molecular structures from the library, focusing on the structure of saturated cycloalkanes. The structure-property prediction model was then applied to the newly generated molecules, assessing their density, volumetric calorific value, and melting point. As a result, 70000 novel molecular structures were generated, and 25 molecular structures meeting the criteria for high energy density fuels were identified. The established variational autoencoder model in this study effectively assimilates the structural information from the sample set and autonomously generates novel high energy density fuels, which is difficult to achieve in traditional experimental methods.

关键词: Coal-based liquid fuel, Structure-property relationship, Convolutional neural network, Variational autoencoder

Abstract: Direct coal liquefaction products offer a considerable quantity of cycloalkanes, which are the valuable candidates for making the high energy density fuels. The creation of such fuels depends on designing molecular structures and calculating their properties, which can be expedited with computer-aided techniques. In this study, a dataset containing 367 fuel molecules was constructed based on the analysis of direct coal liquefied oil. Three convolutional neural network property prediction models have been created based on molecular structure-physical and chemical property data from the library. All the models have good fitting ability with R2 values above 0.97. Then, a variational autoencoder generation model has been established using the molecular structures from the library, focusing on the structure of saturated cycloalkanes. The structure-property prediction model was then applied to the newly generated molecules, assessing their density, volumetric calorific value, and melting point. As a result, 70000 novel molecular structures were generated, and 25 molecular structures meeting the criteria for high energy density fuels were identified. The established variational autoencoder model in this study effectively assimilates the structural information from the sample set and autonomously generates novel high energy density fuels, which is difficult to achieve in traditional experimental methods.

Key words: Coal-based liquid fuel, Structure-property relationship, Convolutional neural network, Variational autoencoder