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Machine learning potentials for metal-organic frameworks using an incremental learning approach

Sander Vandenhaute, Maarten Cools‐Ceuppens, Simon DeKeyser, Toon Verstraelen, Véronique Van Speybroeck

2023npj Computational Materials128 citationsDOIOpen Access PDF

Abstract

Abstract Computational modeling of physical processes in metal-organic frameworks (MOFs) is highly challenging due to the presence of spatial heterogeneities and complex operating conditions which affect their behavior. Density functional theory (DFT) may describe interatomic interactions at the quantum mechanical level, but is computationally too expensive for systems beyond the nanometer and picosecond range. Herein, we propose an incremental learning scheme to construct accurate and data-efficient machine learning potentials for MOFs. The scheme builds on the power of equivariant neural network potentials in combination with parallelized enhanced sampling and on-the-fly training to simultaneously explore and learn the phase space in an iterative manner. With only a few hundred single-point DFT evaluations per material, accurate and transferable potentials are obtained, even for flexible frameworks with multiple structurally different phases. The incremental learning scheme is universally applicable and may pave the way to model framework materials in larger spatiotemporal windows with higher accuracy.

Topics & Concepts

Computer scienceScheme (mathematics)Artificial intelligenceArtificial neural networkConstruct (python library)Machine learningTheoretical computer scienceMathematicsMathematical analysisProgramming languageMetal-Organic Frameworks: Synthesis and ApplicationsMachine Learning in Materials ScienceCrystallography and molecular interactions