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Δ -machine learning for potential energy surfaces: A PIP approach to bring a DFT-based PES to CCSD(T) level of theory

Apurba Nandi, Chen Qu, Paul L. Houston, Riccardo Conte, Joel M. Bowman

2021The Journal of Chemical Physics155 citationsDOIOpen Access PDF

Abstract

“Δ-machine learning” refers to a machine learning approach to bring a property such as a potential energy surface (PES) based on low-level (LL) density functional theory (DFT) energies and gradients close to a coupled cluster (CC) level of accuracy. Here, we present such an approach that uses the permutationally invariant polynomial (PIP) method to fit high-dimensional PESs. The approach is represented by a simple equation, in obvious notation VLL→CC = VLL + ΔVCC–LL, and demonstrated for CH4, H3O+, and trans and cis-N-methyl acetamide (NMA), CH3CONHCH3. For these molecules, the LL PES, VLL, is a PIP fit to DFT/B3LYP/6-31+G(d) energies and gradients and ΔVCC–LL is a precise PIP fit obtained using a low-order PIP basis set and based on a relatively small number of CCSD(T) energies. For CH4, these are new calculations adopting an aug-cc-pVDZ basis, for H3O+, previous CCSD(T)-F12/aug-cc-pVQZ energies are used, while for NMA, new CCSD(T)-F12/aug-cc-pVDZ calculations are performed. With as few as 200 CCSD(T) energies, the new PESs are in excellent agreement with benchmark CCSD(T) results for the small molecules, and for 12-atom NMA, training is done with 4696 CCSD(T) energies.

Topics & Concepts

Invariant (physics)Property (philosophy)Computer scienceSet (abstract data type)Energy (signal processing)NotationSimple (philosophy)PolynomialAlgorithmPotential energyBenchmark (surveying)Basis (linear algebra)Statistical physicsDensity functional theoryArtificial intelligencePhysicsMathematicsTheoretical physicsTheoretical computer scienceExtrapolationSurface (topology)Coupled clusterCorrectnessPerturbation theory (quantum mechanics)Machine Learning in Materials ScienceAdvanced Chemical Physics StudiesCrystallography and molecular interactions
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