Machine Learning Polarizable Force Field Parameters

ORAL

Abstract

Machine learning (ML) techniques with the genetic algorithm (GA) have been applied to determine a polarizable force field parameters using quantum mechanics (QM) data of molecular clusters at the MP2/6-31G(d,p), DFMP2(fc)/jul-cc-pVDZ, and DFMP2(fc)/jul-cc-pVTZ levels to predict experimental condensed phase properties (i.e., density and heat of vaporization). The performance of this ML/GA approach is demonstrated on 4943 dimer electrostatic potentials and 1250 cluster interaction energies for methanol. Excellent agreement between the training data set from QM calculations and the optimized force field model was achieved. The present effort shows the possibility of using machine learning techniques to develop descriptive polarizable force field using only QM data. The ML/GA strategy to optimize force fields parameters described here could easily be extended to other molecular systems.

Presenters

  • Ying Li

    Argonne National Laboratory

Authors

  • Ying Li

    Argonne National Laboratory

  • Hui Li

    University of Chicago

  • Frank Pickard

    National Institutes of Health

  • Badri Narayanan

    Argonne National Laboratory

  • Subramanian Sankaranarayanan

    Argonne National Laboratory

  • Maria Chan

    Argonne National Lab, Argonne National Laboratory, Center for Nanoscale Materials, Argonne National Laboratory

  • Benard Brooks

    National Institutes of Health

  • Benoit Roux

    University of Chicago