A Novel Artificial Intelligence Platform Applied to the Generative Design of Polymer Dielectrics

ORAL

Abstract

Polymers, due to advantages such as low-cost processing, chemical stability, low density and tuneable design, have emerged as a powerhouse class of materials. However, precisely because the design space is so large, traditional approaches (be it experiment or pure simulation) for identifying application-specific polymers are often infeasible: they simply take too long. To accelerate the search, we need a radically different approach, the most promising of which are driven by artificial intelligence, AI, and therefore offer ultrafast predictions.

Here, we present a novel AI platform for the generative design of polymers and use it to discover promising dielectric materials. The key insight is that the distribution of subtle chemical differences between high- and low-performing (as measured by property objectives) polymers can be learned and sampled to generate hypothetical, high-performing materials. Our AI finds tens of thousands of dielectric polymers which meet extreme objectives. Density functional theory simulations of bandgap and electron injection barrier confirm that, out of a small subset, 50% of these hypothetical polymers do indeed match the objectives. Finally, we uncover design rules from the AI and present them as potential structure-property relationships.

Presenters

  • Rishi Gurnani

    • Georgia Institute of Technology
    • Georgia Inst of Tech

Authors

  • Rishi Gurnani

    • Georgia Institute of Technology
    • Georgia Inst of Tech
  • Deepak Kamal

    • Georgia Tech
    • Georgia Institute of Technology
    • Georgia Inst of Tech
  • Huan Tran

    • School of Materials Science and Engineering, Georgia Institute of Technology
    • Georgia Inst of Tech
  • Rampi Ramprasad

    • Georgia Inst of Tech
    • Georgia Tech
    • Georgia Institute of Technology
    • School of Materials Science and Engineering, Georgia Institute of Technology