Machine learning for exploration of defects in 2D grain boundaries
ORAL
Abstract
extended defects. For accelerated sampling, we also deploy a graph neural network (GNN) as a surrogate for DFT in our evolutionary search. This talk will also discuss the importance of the distribution and extent of training data needed to build an adequate GNN surrogate.
–
Publication: Zhang, J., Srinivasan, S., Sankaranarayanan, S. K. R. S. & Lilley, C. M. Evolutionary inverse design of defects at graphene 2D lateral interfaces. J. Appl. Phys.129, 185302 (2021).<br>Zhang, J., Aditya, K., Sankaranarayanan, S. K. R. S. & Lilley, C. M.Graph neural network for energy prediction of 2D interfaces. Manuscript in preparation.
Presenters
-
Jianan Zhang
Department of Mechanical and Industrial Engineering, The University of Illinois at Chicago, 842 W. Taylor, Chicago, Illinois 60607, USA
Authors
-
Jianan Zhang
Department of Mechanical and Industrial Engineering, The University of Illinois at Chicago, 842 W. Taylor, Chicago, Illinois 60607, USA
-
Aditya Koneru
The University of Illinois at Chicago, Argonne National Lab
-
Srilok Srinivasan
Argonne National Laboratory
-
Subramanian Sankaranarayanan
University of Illinois, Argonne National Lab, University of Illinois, Argonne National, University of Illinois, Argonne National Laboratory
-
Carmen M Lilley
Department of Mechanical and Industrial Engineering, The University of Illinois at Chicago, 842 W. Taylor, Chicago, Illinois 60607, USA