KineticNet: Deep learning a transferable kinetic energy functional for
orbital-free density functional theory
- URL: http://arxiv.org/abs/2305.13316v2
- Date: Tue, 24 Oct 2023 13:51:36 GMT
- Title: KineticNet: Deep learning a transferable kinetic energy functional for
orbital-free density functional theory
- Authors: Roman Remme, Tobias Kaczun, Maximilian Scheurer, Andreas Dreuw, Fred
A. Hamprecht
- Abstract summary: KineticNet is an equivariant deep neural network architecture based on point convolutions adapted to the prediction of quantities on molecular quadrature grids.
For the first time, chemical accuracy of the learned functionals is achieved across input densities and geometries of tiny molecules.
- Score: 13.437597619451568
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Orbital-free density functional theory (OF-DFT) holds the promise to compute
ground state molecular properties at minimal cost. However, it has been held
back by our inability to compute the kinetic energy as a functional of the
electron density only. We here set out to learn the kinetic energy functional
from ground truth provided by the more expensive Kohn-Sham density functional
theory. Such learning is confronted with two key challenges: Giving the model
sufficient expressivity and spatial context while limiting the memory footprint
to afford computations on a GPU; and creating a sufficiently broad distribution
of training data to enable iterative density optimization even when starting
from a poor initial guess. In response, we introduce KineticNet, an equivariant
deep neural network architecture based on point convolutions adapted to the
prediction of quantities on molecular quadrature grids. Important contributions
include convolution filters with sufficient spatial resolution in the vicinity
of the nuclear cusp, an atom-centric sparse but expressive architecture that
relays information across multiple bond lengths; and a new strategy to generate
varied training data by finding ground state densities in the face of
perturbations by a random external potential. KineticNet achieves, for the
first time, chemical accuracy of the learned functionals across input densities
and geometries of tiny molecules. For two electron systems, we additionally
demonstrate OF-DFT density optimization with chemical accuracy.
Related papers
- NeuralSCF: Neural network self-consistent fields for density functional theory [1.7667864049272723]
Kohn-Sham density functional theory (KS-DFT) has found widespread application in accurate electronic structure calculations.
We propose a neural network self-consistent fields (NeuralSCF) framework that establishes the Kohn-Sham density map as a deep learning objective.
arXiv Detail & Related papers (2024-06-22T15:24:08Z) - Neural Pfaffians: Solving Many Many-Electron Schrödinger Equations [58.130170155147205]
Neural wave functions accomplished unprecedented accuracies in approximating the ground state of many-electron systems, though at a high computational cost.
Recent works proposed amortizing the cost by learning generalized wave functions across different structures and compounds instead of solving each problem independently.
This work tackles the problem by defining overparametrized, fully learnable neural wave functions suitable for generalization across molecules.
arXiv Detail & Related papers (2024-05-23T16:30:51Z) - Orbital-Free Density Functional Theory with Continuous Normalizing Flows [54.710176363763296]
Orbital-free density functional theory (OF-DFT) provides an alternative approach for calculating the molecular electronic energy.
Our model successfully replicates the electronic density for a diverse range of chemical systems.
arXiv Detail & Related papers (2023-11-22T16:42:59Z) - Overcoming the Barrier of Orbital-Free Density Functional Theory for
Molecular Systems Using Deep Learning [46.08497356503155]
Orbital-free density functional theory (OFDFT) is a quantum chemistry formulation that has a lower cost scaling than the prevailing Kohn-Sham DFT.
Here we propose M-OFDFT, an OFDFT approach capable of solving molecular systems using a deep learning functional model.
arXiv Detail & Related papers (2023-09-28T16:33:36Z) - Modeling Non-Covalent Interatomic Interactions on a Photonic Quantum
Computer [50.24983453990065]
We show that the cQDO model lends itself naturally to simulation on a photonic quantum computer.
We calculate the binding energy curve of diatomic systems by leveraging Xanadu's Strawberry Fields photonics library.
Remarkably, we find that two coupled bosonic QDOs exhibit a stable bond.
arXiv Detail & Related papers (2023-06-14T14:44:12Z) - Molecular Geometry-aware Transformer for accurate 3D Atomic System
modeling [51.83761266429285]
We propose a novel Transformer architecture that takes nodes (atoms) and edges (bonds and nonbonding atom pairs) as inputs and models the interactions among them.
Moleformer achieves state-of-the-art on the initial state to relaxed energy prediction of OC20 and is very competitive in QM9 on predicting quantum chemical properties.
arXiv Detail & Related papers (2023-02-02T03:49:57Z) - Electronic-structure properties from atom-centered predictions of the
electron density [0.0]
electron density of a molecule or material has recently received major attention as a target quantity of machine-learning models.
We propose a gradient-based approach to minimize the loss function of the regression problem in an optimized and highly sparse feature space.
We show that starting from the predicted density a single Kohn-Sham diagonalization step can be performed to access total energy components that carry an error of just 0.1 meV/atom.
arXiv Detail & Related papers (2022-06-28T15:35:55Z) - Computing molecular excited states on a D-Wave quantum annealer [52.5289706853773]
We demonstrate the use of a D-Wave quantum annealer for the calculation of excited electronic states of molecular systems.
These simulations play an important role in a number of areas, such as photovoltaics, semiconductor technology and nanoscience.
arXiv Detail & Related papers (2021-07-01T01:02:17Z) - Quantum deep field: data-driven wave function, electron density
generation, and atomization energy prediction and extrapolation with machine
learning [7.106986689736826]
Deep neural networks (DNNs) have been used to successfully predict molecular properties calculated based on the Kohn--Sham density functional theory (KS-DFT)
This letter presents the quantum deep field (QDF), which provides the electron density with an unsupervised but end-to-end physics-informed modeling by learning the atomization energy on a large-scale dataset.
arXiv Detail & Related papers (2020-11-16T13:15:16Z) - DeepDFT: Neural Message Passing Network for Accurate Charge Density
Prediction [0.0]
DeepDFT is a deep learning model for predicting the electronic charge density around atoms.
The accuracy and scalability of the model are demonstrated for molecules, solids and liquids.
arXiv Detail & Related papers (2020-11-04T16:56:08Z) - Accelerating Finite-temperature Kohn-Sham Density Functional Theory with
Deep Neural Networks [2.7035666571881856]
We present a numerical modeling workflow based on machine learning (ML) which reproduces the the total energies produced by Kohn-Sham density functional theory (DFT) at finite electronic temperature.
Based on deep neural networks, our workflow yields the local density of states (LDOS) for a given atomic configuration.
We demonstrate the efficacy of this approach for both solid and liquid metals and compare results between independent and unified machine-learning models for solid and liquid aluminum.
arXiv Detail & Related papers (2020-10-10T05:38:03Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.