二进制数
人工神经网络
工作(物理)
相平衡
热力学
实验数据
计算机科学
汽液平衡
机器学习
相(物质)
人工智能
化学
数学
物理
统计
算术
有机化学
作者
Guanlun Sun,Zhenyu Zhao,Shengjie Sun,Yiming Ma,Hong Li,Xin Gao
标识
DOI:10.1016/j.ces.2023.119358
摘要
Basic thermodynamic data plays an important role in chemical applications. However, the traditional acquisition of thermodynamic data through experiments is laborious. Thermodynamic data prediction is considered as an alternative to the experiments, especially when qualitative analysis is needed prior to experimental studies. In this work, we report a successful machine-learning based approach to predict the fundamental thermodynamics characteristics of vapor–liquid equilibrium (VLE). A new dataset of the VLE experimental data of 210 binary mixtures with screened descriptors were constructed. The obtained results show that the VLE characteristics of the target system can be fully revealed by machine learning methods and random forest has more excellent predictive ability on the VLE behavior than the neural network. This work provides a new approach to the prediction of VLE data and useful information for the mechanistic study on the VLE phenomenon.
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