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High-dimensional neural network potentials for accurate vibrational frequencies: the formic acid dimer benchmark

Dilshana Shanavas Rasheeda, Alberto Martín Santa Daría, Benjamin Schröder, Edit Mátyus, Jörg Behler

2022Physical Chemistry Chemical Physics23 citationsDOIOpen Access PDF

Abstract

In recent years, machine learning potentials (MLP) for atomistic simulations have attracted a lot of attention in chemistry and materials science. Many new approaches have been developed with the primary aim to transfer the accuracy of electronic structure calculations to large condensed systems containing thousands of atoms. In spite of these advances, the reliability of modern MLPs in reproducing the subtle details of the multi-dimensional potential-energy surface is still difficult to assess for such systems. On the other hand, moderately sized systems enabling the application of tools for thorough and systematic quality-control are nowadays rarely investigated. In this work we use benchmark-quality harmonic and anharmonic vibrational frequencies as a sensitive probe for the validation of high-dimensional neural network potentials. For the case of the formic acid dimer, a frequently studied model system for which stringent spectroscopic data became recently available, we show that high-quality frequencies can be obtained from state-of-the-art calculations in excellent agreement with coupled cluster theory and experimental data.

Topics & Concepts

AnharmonicityBenchmark (surveying)Artificial neural networkPotential energy surfaceComputer scienceFormic acidReliability (semiconductor)Statistical physicsMaterials scienceChemistryArtificial intelligencePhysicsAb initioThermodynamicsQuantum mechanicsGeodesyGeographyPower (physics)ChromatographyMachine Learning in Materials ScienceComputational Drug Discovery MethodsVarious Chemistry Research Topics