Virtual node graph neural network for full phonon prediction
/ Authors
Ryotaro Okabe, Abhijatmedhi Chotrattanapituk, Artittaya Boonkird, Nina Andrejevic, Xiang Fu, T. Jaakkola, Qichen Song, Thanh Nguyen, Nathan C. Drucker, Sai Mu
and 34 more authors
Bolin Liao, Yongqiang Cheng, Mingda Li Quantum Measurement Group, M. I. O. Technology, Cambridge, Ma, USA. Department of Chemistry, U. D. O. A. Engineering, Computer Science, Usa Department of Computer Science, Engineering, Usa Argonne National Laboratory, Lemont, Il, Chemical Biology, Harvard University, Usa Applied Physics, School of Electrical Engineering, A. Sciences, USA. Department of physics, Astronomy, U. O. N. Carolina, Columbia, S. Carolina, Usa Department of Materials, U. California, Santa Barbara, Ca, Usa Chemical Spectroscopy Group, Spectroscopy Section, Neutron Scattering Division Oak Ridge National Laboratory, Oak Ridge, Tn, USA.
/ Abstract
Understanding the structure–property relationship is crucial for designing materials with desired properties. The past few years have witnessed remarkable progress in machine-learning methods for this connection. However, substantial challenges remain, including the generalizability of models and prediction of properties with materials-dependent output dimensions. Here we present the virtual node graph neural network to address the challenges. By developing three virtual node approaches, we achieve Γ-phonon spectra and full phonon dispersion prediction from atomic coordinates. We show that, compared with the machine-learning interatomic potentials, our approach achieves orders-of-magnitude-higher efficiency with comparable to better accuracy. This allows us to generate databases for Γ-phonon containing over 146,000 materials and phonon band structures of zeolites. Our work provides an avenue for rapid and high-quality prediction of phonon band structures enabling materials design with desired phonon properties. The virtual node method also provides a generic method for machine-learning design with a high level of flexibility. In this study, the authors present a virtual node graph neural network to enable the prediction of material properties with variable output dimensions. This method offers fast and accurate predictions of phonon band structures in complex solids.
Journal: Nature Computational Science