Literature DB >> 33498723

Predictive Models for the Binary Diffusion Coefficient at Infinite Dilution in Polar and Nonpolar Fluids.

José P S Aniceto1, Bruno Zêzere1, Carlos M Silva1.   

Abstract

Experimental diffusivities are scarcely available, though their knowledge is essential to model rate-controlled processes. In this work various machine learning models to estimate diffusivities in polar and nonpolar solvents (except water and supercritical CO2) were developed. Such models were trained on a database of 90 polar systems (1431 points) and 154 nonpolar systems (1129 points) with data on 20 properties. Five machine learning algorithms were evaluated: multilinear regression, k-nearest neighbors, decision tree, and two ensemble methods (random forest and gradient boosted). For both polar and nonpolar data, the best results were found using the gradient boosted algorithm. The model for polar systems contains 6 variables/parameters (temperature, solvent viscosity, solute molar mass, solute critical pressure, solvent molar mass, and solvent Lennard-Jones energy constant) and showed an average deviation (AARD) of 5.07%. The nonpolar model requires five variables/parameters (the same of polar systems except the Lennard-Jones constant) and presents AARD = 5.86%. These results were compared with four classic models, including the 2-parameter correlation of Magalhães et al. (AARD = 5.19/6.19% for polar/nonpolar) and the predictive Wilke-Chang equation (AARD = 40.92/29.19%). Nonetheless Magalhães et al. requires two parameters per system that must be previously fitted to data. The developed models are coded and provided as command line program.

Entities:  

Keywords:  diffusion coefficient; machine learning; modeling; nonpolar; polar; prediction

Year:  2021        PMID: 33498723      PMCID: PMC7866074          DOI: 10.3390/ma14030542

Source DB:  PubMed          Journal:  Materials (Basel)        ISSN: 1996-1944            Impact factor:   3.623


  6 in total

1.  A QSPR model for prediction of diffusion coefficient of non-electrolyte organic compounds in air at ambient condition.

Authors:  Seyyed Alireza Mirkhani; Farhad Gharagheizi; Mehdi Sattari
Journal:  Chemosphere       Date:  2011-12-20       Impact factor: 7.086

2.  Boosting: an ensemble learning tool for compound classification and QSAR modeling.

Authors:  Vladimir Svetnik; Ting Wang; Christopher Tong; Andy Liaw; Robert P Sheridan; Qinghua Song
Journal:  J Chem Inf Model       Date:  2005 May-Jun       Impact factor: 4.956

3.  Estimation of molecular diffusivity of pure chemicals in water: a quantitative structure-property relationship study.

Authors:  F Gharagheizi; M Sattari
Journal:  SAR QSAR Environ Res       Date:  2009       Impact factor: 3.000

4.  Limiting diffusion coefficients of ionic liquids in water and methanol: a combined experimental and molecular dynamics study.

Authors:  A Heintz; R Ludwig; E Schmidt
Journal:  Phys Chem Chem Phys       Date:  2011-01-13       Impact factor: 3.676

5.  Diffusion coefficients of phenylbutazone in supercritical CO2 and in ethanol.

Authors:  Chang Yi Kong; Kou Watanabe; Toshitaka Funazukuri
Journal:  J Chromatogr A       Date:  2013-01-10       Impact factor: 4.759

6.  Machine learning methods in chemoinformatics.

Authors:  John B O Mitchell
Journal:  Wiley Interdiscip Rev Comput Mol Sci       Date:  2014-09-01
  6 in total
  1 in total

1.  Diffusion of Squalene in Nonaqueous Solvents.

Authors:  Bruce A Kowert
Journal:  ACS Omega       Date:  2022-08-23
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.