Litcius/Paper detail

Global machine learning potentials for molecular crystals

Ivan Žugec, R. Matthias Geilhufe, Ivor Lončarić

2024The Journal of Chemical Physics15 citationsDOIOpen Access PDF

Abstract

Molecular crystals are difficult to model with accurate first-principles methods due to large unit cells. On the other hand, accurate modeling is required as polymorphs often differ by only 1 kJ/mol. Machine learning interatomic potentials promise to provide accuracy of the baseline first-principles methods with a cost lower by orders of magnitude. Using the existing databases of the density functional theory calculations for molecular crystals and molecules, we train global machine learning interatomic potentials, usable for any molecular crystal. We test the performance of the potentials on experimental benchmarks and show that they perform better than classical force fields and, in some cases, are comparable to the density functional theory calculations.

Topics & Concepts

USableDensity functional theoryCrystal (programming language)Computer scienceMolecular dynamicsMoleculeCrystal structure predictionStatistical physicsArtificial intelligenceMachine learningPhysicsComputational chemistryChemistryQuantum mechanicsWorld Wide WebProgramming languageMachine Learning in Materials ScienceComputational Drug Discovery MethodsCrystallography and molecular interactions