离子液体
支持向量机
随机森林
熔点
航程(航空)
离子
集成学习
点(几何)
决策树
回归
量子化学
计算机科学
机器学习
热力学
化学
材料科学
数学
物理
统计
有机化学
复合材料
催化作用
几何学
作者
Vishwesh Venkatraman,Sigvart Evjen,Hanna K. Knuutila,Anne Fiksdahl,Bjørn K. Alsberg
标识
DOI:10.1016/j.molliq.2018.03.090
摘要
Abstract The melting point (Tm) of an ionic liquid (IL) is of crucial importance in many applications. The Tm can vary considerably depending on the choice of the anion and cation. This study explores the use of various machine learning (ML) methods to predict the melting points (− 96 °C–359 °C range) of structurally diverse 2212 ILs based on a combination of 1369 cations and 141 anions. Among the ML models applied to independent training and test sets, tree-based ensemble methods (Cubist, random forest and gradient boosted regression) were found to demonstrate slightly better performance over support vector machines and k-nearest neighbour approaches. In comparison, quantum chemistry based COSMOtherm predictions were generally found to have significant deviations with respect to the experimental values. However, classification models were more efficient in discriminating between ILs with Tm > 100 °C and those below 100 °C.
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