Machine Learning Diffusion Monte Carlo Energy Densities

05/09/2022
by   Kevin Ryczko, et al.
0

We present two machine learning methodologies which are capable of predicting diffusion Monte Carlo (DMC) energies with small datasets (≈60 DMC calculations in total). The first uses voxel deep neural networks (VDNNs) to predict DMC energy densities using Kohn-Sham density functional theory (DFT) electron densities as input. The second uses kernel ridge regression (KRR) to predict atomic contributions to the DMC total energy using atomic environment vectors as input (we used atom centred symmetry functions, atomic environment vectors from the ANI models, and smooth overlap of atomic positions). We first compare the methodologies on pristine graphene lattices, where we find the KRR methodology performs best in comparison to gradient boosted decision trees, random forest, gaussian process regression, and multilayer perceptrons. In addition, KRR outperforms VDNNs by an order of magnitude. Afterwards, we study the generalizability of KRR to predict the energy barrier associated with a Stone-Wales defect. Lastly, we move from 2D to 3D materials and use KRR to predict total energies of liquid water. In all cases, we find that the KRR models are more accurate than Kohn-Sham DFT and all mean absolute errors are less than chemical accuracy.

READ FULL TEXT
research
12/21/2021

High pressure hydrogen by machine learning and quantum Monte Carlo

We have developed a technique combining the accuracy of quantum Monte Ca...
research
05/15/2019

Materials property prediction using symmetry-labeled graphs as atomic-position independent descriptors

Computational materials screening studies require fast calculation of th...
research
10/10/2020

Accelerating Finite-temperature Kohn-Sham Density Functional Theory with Deep Neural Networks

We present a numerical modeling workflow based on machine learning (ML) ...
research
10/30/2018

Band gap prediction for large organic crystal structures with machine learning

Machine learning models are capable of capturing the structure-property ...
research
09/24/2021

MLIMC: Machine learning-based implicit-solvent Monte Carlo

Monte Carlo (MC) methods are important computational tools for molecular...
research
03/30/2017

Minimum energy path calculations with Gaussian process regression

The calculation of minimum energy paths for transitions such as atomic a...
research
06/14/2017

Nudged elastic band calculations accelerated with Gaussian process regression

Minimum energy paths for transitions such as atomic and/or spin rearrang...

Please sign up or login with your details

Forgot password? Click here to reset