Accurate Density Prediction of Sesquiterpenoid HEDFs and the Multiproperty Computing Server SesquiterPre
Hang Yang,
Zhi-Jiang Yang,
Teng-Xin Huang
et al.
Abstract:Accurate and rapid evaluation of density is crucial for evaluating the packing and combustion characteristics of highenergy-density fuels (HEDFs). This parameter is pivotal in the selection of high-performance HEDFs. Our study leveraged a polycyclic compound density data set and quantum chemical (QC) descriptors to establish a correlation with the target properties using the XGBoost algorithm. We utilized a recursive feature elimination method to simplify the model and developed a concise and interpretable den… Show more
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