Bridging Machine Learning and COSMO-SAC for Accurate Prediction of Infinite Dilute Activity Coefficients of Binary Mixtures
en-GBde-DEes-ESfr-FR

Bridging Machine Learning and COSMO-SAC for Accurate Prediction of Infinite Dilute Activity Coefficients of Binary Mixtures

20.03.2026 Frontiers Journals

Solvents play an indispensable role in numerous chemical processes, including gas absorption, extraction, and reactions, which makes solvent selection one of the critical decisions in early-stage chemical process design. Given the vast number of potential solvents and their mixtures, solely experimental evaluation of their properties is prohibitively time- and cost-intensive. The infinite dilution activity coefficient is a fundamental thermodynamic property widely used to characterize liquid mixtures, especially for describing phase and chemical equilibria.
In this study, researchers developed a hybrid COSMO-SAC-ML workflow that delivers fast and quantitative predictions of infinite dilution activity coefficient. To circumvent labor-intensive and time-consuming quantum chemistry calculations, a multi-task deep learning model was developed to predict the σ-profile and molecular cavity volume as essential inputs for COSMO-SAC calculation. The prediction model achieved high predictive accuracy, with R² values of 0.982 for σ-profile and 0.997 for molecular cavity volume. The model exhibits excellent capability in distinguishing stereoisomers, cis/trans isomers, protonated/deprotonated species, and is also applicable to ionic liquids.
Based on the constructed prediction model, the original COSMO-SAC was evaluated on over 20000 experimental data points. Results revealed significant limitations, with a mean absolute error of 0.944 and a negative R² value of -0.443, indicating that the original model sometimes provides only qualitative rather than quantitative predictions, exhibiting particularly large errors for hydrogen-bonding mixtures such as halogenated-alcohols mixtures.
To enhance performance, four adjustable parameters within COSMO-SAC were optimized using the experimental data set. Parameter optimization yielded substantial improvement, reducing mean absolute error to 0.510 and increasing R² to 0.625. To further elevate predictive performance, boosting ensemble learning was implemented to predict residuals between experimental values and optimized COSMO-SAC predictions. The resulting hybrid COSMO-SAC-ML model achieved a remarkably low mean absolute error of 0.102, representing an 89.2% reduction compared to the original model, alongside a high R² value of 0.969.
The proposed COSMO-SAC-ML strategy showcases how classical thermodynamics and modern machine learning can complement each other to achieve both accuracy and physical insight, offering a robust platform for high-throughput solvent screening and broader mixture-property prediction. This accurate and efficient approach broadens the practical applicability of σ-profile and molecular cavity volume prediction, as well as infinite dilution activity coefficient calculations based on COSMO-SAC, facilitating high-throughput solvent screening for diverse chemical engineering applications.
DOI
10.1007/s11705-026-2625-y
Angehängte Dokumente
  • IMAGE: Schematic workflow of the hybrid COSMO-SAC-ML model for accelerated and accurate γ∞ prediction.
20.03.2026 Frontiers Journals
Regions: Asia, China
Keywords: Science, Chemistry

Disclaimer: AlphaGalileo is not responsible for the accuracy of content posted to AlphaGalileo by contributing institutions or for the use of any information through the AlphaGalileo system.

Referenzen

We have used AlphaGalileo since its foundation but frankly we need it more than ever now to ensure our research news is heard across Europe, Asia and North America. As one of the UK’s leading research universities we want to continue to work with other outstanding researchers in Europe. AlphaGalileo helps us to continue to bring our research story to them and the rest of the world.
Peter Dunn, Director of Press and Media Relations at the University of Warwick
AlphaGalileo has helped us more than double our reach at SciDev.Net. The service has enabled our journalists around the world to reach the mainstream media with articles about the impact of science on people in low- and middle-income countries, leading to big increases in the number of SciDev.Net articles that have been republished.
Ben Deighton, SciDevNet
AlphaGalileo is a great source of global research news. I use it regularly.
Robert Lee Hotz, LA Times

Wir arbeiten eng zusammen mit...


  • e
  • The Research Council of Norway
  • SciDevNet
  • Swiss National Science Foundation
  • iesResearch
Copyright 2026 by DNN Corp Terms Of Use Privacy Statement