Prediction of suitable solvents and non-solvents for polymers using machine learning techniques

ORAL

Abstract

Solvent selection is essential for formulations in industrial and research processes like paints, cosmetics and pharmaceuticals. Identifying appropriate solvents for a polymer formulation is usually done by trial-and-error, and therefore, is time-consuming. To mitigate this problem, quantitative measures of solvent-polymer miscibility known as solubility parameters have been developed in the past. In the present study, we first assessed the performance of the Hildebrand solubility parameter to predict solvents for a set of benchmark polymers. Machine learning techniques, trained on a dataset of known polymer Hildebrand solubility parameters, were then used to predict the solubility parameter of a queried polymer. Matching the predicted value with known solvent solubility parameters was then utilized to identify suitable solvents and non-solvents for the queried polymer. This capability has been implemented at www.polymergenome.org.

*This work is supported by the Office of Naval Research through grants N00014-17-1-2656 and N00014-16-1-2580.

Presenters

  • Shruti Venkatram

    • Georgia Institute of Technology

Authors

  • Shruti Venkatram

    • Georgia Institute of Technology
  • Chiho Kim

    • Georgia Institute of Technology
  • Anand Chandrasekaran

    • Georgia Institute of Technology
  • Ramamurthy Ramprasad

    • Georgia Institute of Technology
    • University of Connecticut
    • School of Materials Science and Engineering, Georgia Institute of Technology
    • Materials Science and Engineering, Georgia Institute of Technology
    • School of Materials Science and Engineering, Georgia Institute of Techmology