Building Chemical Property Models for Energetic Materials from Small Datasets Using a Transfer Learning Approach.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

For many experimentally measured chemical properties that cannot be directly computed from first-principles, the existing physics-based models do not extrapolate well to out-of-sample molecules, and experimental datasets themselves are too small for traditional machine learning (ML) approaches. To overcome these limitations, we apply a transfer learning approach, whereby we simultaneously train a multi-target regression model on a small number of molecules with experimentally measured values and a large number of molecules with related computed properties. We demonstrate this methodology on predicting the experimentally measured impact sensitivity of energetic crystals, finding that both characteristics of the computed dataset and model architecture are important to prediction accuracy of the small experimental dataset. Our directed-message passing neural network (D-MPNN) ML model using transfer learning outperforms direct-ML and physics-based models on a diverse test set, and the new methods described here are widely applicable to modeling many other structure-property relationships.

Authors

  • Joshua L Lansford
    U.S. Army Combat Capabilities Development Command (DEVCOM) Army Research Laboratory, Aberdeen Proving Ground, Maryland 21005, United States.
  • Brian C Barnes
    Detonation Science and Modeling Branch, CCDC Army Research Laboratory, Aberdeen Proving Ground, Maryland 21005, United States.
  • Betsy M Rice
    CCDC Army Research Laboratory, Aberdeen Proving Ground, MD, 21005, USA.
  • Klavs F Jensen
    Department of Chemical Engineering, Massachusetts Institute of Technology 77 Massachusetts Avenue Cambridge MA 02139 USA whgreen@mit.edu kfjensen@mit.edu.