Towards Inverse Design of Metal-Organic Frameworks to Maximize Hydrogen Storage using Deep Learning

ORAL

Abstract

Metal-organic frameworks (MOFs) are a class of crystalline porous materials consisting of metal nodes and organic linkers. MOFs have applications in gas separation, gas purification, and electrolytic catalysis, among other fields. Consequently, the creation of better MOFs for these purposes represents a multibillion-dollar engineering challenge. Using machine learning can help exponentially accelerate the research and discovery of suitable MOFs for these applications. We implement Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs) that utilize scaled-down voxel representations of real MOFs for the inverse design of new MOFs with maximal hydrogen adsorption. High hydrogen adsorption MOFs offer a potentially safe and efficient storage method of hydrogen gas for use in fuel cells. This could be critical to environmentally friendly transportation or UAVs industries as well useful to scientists studying materials science, machine learning, and their intersection

*This material is based upon work supported by the National Science Foundation under Grant No. DMR-1940243. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation.

Presenters

  • Kevin Phillips

    • Binghamton University

Authors

  • Kevin Phillips

    • Binghamton University
  • Shehtab Zaman

    • Binghamton University
  • Kenneth Chiu

    • Binghamton University
  • Michael Lawler

    • Physics, Cornell University
    • Department of Physics, Applied Physics, and Astronomy, Binghamton University
    • Cornell University
    • Binghamton University