Development of an Infinite Dilution Activity Coefficient
Prediction Model for Organic Solutes in Ionic Liquids with Modified
Partial Equalization Orbital Electronegativity Method Derived Descriptors
posted on 2021-06-03, 14:11authored byHyeon-Nae Jeon, Hyun Kil Shin, Sungbo Hwang, Kyoung Tai No
The objective of
this study was to develop a robust prediction
model for the infinite dilution activity coefficients (γ∞) of organic molecules in diverse ionic liquid
(IL) solvents. Electrostatic, hydrogen bond, polarizability, molecular
structure, and temperature terms were used in model development. A
feed-forward model based on artificial neural networks was developed
with 34,754 experimental activity coefficients, a combination of 195
IL solvents (88 cations and 38 anions), and 147 organic solutes at
a temperature range of 298 to 408 K. The root mean squared error (RMSE)
of the training set and test set was 0.219 and 0.235, respectively.
The R2 of the training set and the test
set was 0.984 and 0.981, respectively. The applicability domain was
determined through a Williams plot, which implied that water and halogenated
compounds were outside of the applicability domain. The robustness
test shows that the developed model is robust. The web server supports
using the developed prediction model and is freely available at https://preadmet.bmdrc.kr/activitycoefficient_mainpage/prediction/.