Searching for New Material Properties Using Artificial Intelligence

ORAL

Abstract

Superconductors, materials that lack electrical resistance below a specific temperature, possess a range of unique properties that allow for their application to scientific and technological advancements. However, the search for properties that could identify superconductors is computationally expensive and time consuming. Using a dataset comprised of materials based on the 2-dimentional monolayer structure A2B2X6, we examine the role of the X site to determine if formation energy can be predicted by a known list of material descriptors of superconductive properties through the implementation of neural networks. This data-driven approach has revealed the importance of understanding the best descriptors for determining formation energy in superconductive materials, such as the importance of electron affinity in defining a material’s formation energy. Our approach can provide insight into future research based on discovering the material properties of superconductive materials.

*Funding for this research was provided by the Center for Data Science and Artificial Intelligence at the University of Mount Union. Travel assistance was provided by the University of Mount Union.

Presenters

  • Ava Powers

    • University of Mount Union

Authors

  • Ava Powers

    • University of Mount Union
  • Julie L Butler

    • University of Mount Union