Prediction of soil sorption coefficients with a conductor-like screening model for real solvents
Description
Using a general theory for partition coefficients based on a quantum chemically derived conductor-like screening model for real solvents σ-moment descriptors, the logarithmic soil sorption coefficients log KOC of a database of 440 compounds has been successfully correlated, achieving a standard deviation (root-means-squared [RMS]) of 0.62 log-units on the training set and a predictive RMS of 0.72 log-units on a more demanding test set. The quality of this generally applicable predictive approach is almost the same as that of a regression of log KOC with experimental log KOW values, which are the best correlations currently available. The error of this new predictive method is only approximately 43% of the error of a recently published model using a different quantum chemically based approach.
Files
article.pdf
Files
(519.1 kB)
Name | Size | Download all |
---|---|---|
md5:7296f2e03eaf775457d2947a9bf9597c
|
519.1 kB | Preview Download |