Graph neural networks for fast electron density estimation of molecules,
liquids, and solids
- URL: http://arxiv.org/abs/2112.00652v1
- Date: Wed, 1 Dec 2021 16:57:31 GMT
- Title: Graph neural networks for fast electron density estimation of molecules,
liquids, and solids
- Authors: Peter Bj{\o}rn J{\o}rgensen and Arghya Bhowmik
- Abstract summary: We present a machine learning framework for the prediction of $rho(vecr)$.
The model is tested across multiple data sets of molecules (QM9), liquid ethylene carbonate electrolyte (EC) and LixNiyMnzCo (1-y-z)O2 lithium ion battery cathodes (NMC)
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Electron density $\rho(\vec{r})$ is the fundamental variable in the
calculation of ground state energy with density functional theory (DFT). Beyond
total energy, features in $\rho(\vec{r})$ distribution and modifications in
$\rho(\vec{r})$ are often used to capture critical physicochemical phenomena in
functional materials and molecules at the electronic scale. Methods providing
access to $\rho(\vec{r})$ of complex disordered systems with little
computational cost can be a game changer in the expedited exploration of
materials phase space towards the inverse design of new materials with better
functionalities. We present a machine learning framework for the prediction of
$\rho(\vec{r})$. The model is based on equivariant graph neural networks and
the electron density is predicted at special query point vertices that are part
of the message passing graph, but only receive messages. The model is tested
across multiple data sets of molecules (QM9), liquid ethylene carbonate
electrolyte (EC) and LixNiyMnzCo(1-y-z)O2 lithium ion battery cathodes (NMC).
For QM9 molecules, the accuracy of the proposed model exceeds typical
variability in $\rho(\vec{r})$ obtained from DFT done with different
exchange-correlation functional and show beyond the state of the art accuracy.
The accuracy is even better for the mixed oxide (NMC) and electrolyte (EC)
datasets. The linear scaling model's capacity to probe thousands of points
simultaneously permits calculation of $\rho(\vec{r})$ for large complex systems
many orders of magnitude faster than DFT allowing screening of disordered
functional materials.
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