Learning to Use the Force: Fitting Repulsive Potentials in Density-Functional Tight-Binding with Gaussian Process Regression, Theoretical and Computational Chemistry, ChemRxiv

Description

The Density-Functional Tight Binding (DFTB) method is a popular semiempirical approximation to Density Functional Theory (DFT). In many cases, DFTB can provide comparable accuracy to DFT at a fraction of the cost, enabling simulations on length- and time-scales that are unfeasible with first principles DFT. At the same time (and in contrast to empirical interatomic potentials and force-fields), DFTB still offers direct access to electronic properties such as the band-structure. These advantages come at the cost of introducing empirical parameters to the method, leading to a reduced transferability compared to true first-principle approaches. Consequently, it would be very useful if the parameter-sets could be routinely adjusted for a given project. While fairly robust and transferable parameterization workflows exist for the electronic structure part of DFTB, the so-called repulsive potential Vrep poses a major challenge. In this paper we propose a machine-learning (ML) approach to fitting Vrep, using Gaussian Process Regression (GPR). The use of GPR circumvents the need for non-linear or global parameter optimization, while at the same time offering arbitrary flexibility in terms of the functional form. We also show that the proposed method can be applied to multiple elements at once, by fitting repulsive potentials for organic molecules containing carbon, hydrogen and oxygen. Overall, the new approach removes focus from the choice of functional form and parameterization procedure, in favour of a data-driven philosophy.

Neural network potentials for chemistry: concepts, applications

Machine learning sparse tight-binding parameters for defects

PDF) Extended tight‐binding quantum chemistry methods

PDF) Electrostatic Embedding of Machine Learning Potentials

PDF) Outsmarting Quantum Chemistry Through Transfer Learning

Density-Functional Tight-Binding (DFTB) as fast approximate DFT

OpenKIM · SNAP ZuoChenLi 2019quadratic Si MO_721469752060_000

XTBDFT: Automated workflow for conformer searching of minima and

OpenKIM · SNAP ZuoChenLi 2019quadratic Li MO_041269750353_000

Database of Wannier tight-binding Hamiltonians using high

Analysis of Density Functional Tight Binding with Natural Bonding

PPT - Fast approximate methods for global chemical insight: DFTB

$ 6.50USD
Score 4.5(142)
In stock
Continue to book