AI-driven materials discovery of novel solar cell materials
ORAL
Abstract
AI-driven materials discovery has become a new paradigm for condensed matter physics. In this work, we optimize an atomistic line graph neural network (ALIGNN) model for rapidly predicting the dielectric function of potential optoelectronic materials. The graph neural network, which is trained on approximately 7000 dielectric functions from the Joint Automated Repository for Various Integrated Systems-Density Functional Theory (JARVIS-DFT) database, can accurately reproduce spectral features, allowing it to effectively characterize derived properties, including the solar efficiency. This success is encouraging evidence for the general application of advanced graph neural networks to the prediction of spectral properties. We are thus able to confidently employ this model to analyze over 400,000 3D DFT materials in the Alexandria materials database, and identified that the perovskite class of materials tends to have a higher proportion of high-efficiency solar cell materials [1].
*This work was supported by the National Science Foundation (Grant No. NSF OAC-2311558). Computational resources were provided by the WVU Research Computing Dolly Sods HPC cluster, which is funded in part by NSF OAC-2117575 and the Frontera supercomputer at the Texas Advanced Computing Center (TACC) at the University of Texas at Austin, which is supported by National Science Foundation Grant No. OAC-1818253.
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Publication: [1] C. Ginter, K. Choudhary, S. Mandal: "Accelerated prediction of dielectric functions in solar cell materials with graph neural networks"; arXiv:2510.08738
Presenters
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Caden Ginter
- West Virginia University