Data-driven construction of machine-learning-based interatomic potentials for gas-surface scattering dynamics: the case of NO on graphite
Samuel Del Fr\'e, Gilberto A. Alou Angulo, Maurice Monnerville, Alejandro Rivero Santamar\'ia

TL;DR
This paper presents a data-driven workflow for creating machine-learning interatomic potentials that accurately simulate gas-surface scattering, exemplified by NO on graphite, enabling detailed and efficient atomistic simulations.
Contribution
The authors develop a novel, descriptor-guided, active-learning approach to construct transferable MLIPs for gas-surface interactions, improving simulation accuracy and efficiency.
Findings
MLIP accurately reproduces reference energies and forces
Simulations match experimental scattering trends
Method reduces computational cost significantly
Abstract
Accurate atomistic simulations of gas-surface scattering require potential energy surfaces that remain reliable over broad configurational and energetic ranges while retaining the efficiency needed for extensive trajectory sampling. Here, we develop a data-driven workflow for constructing a machine-learning interatomic potential (MLIP) tailored to gas-surface scattering dynamics, using nitric oxide (NO) scattering from highly oriented pyrolytic graphite (HOPG) as a benchmark system. Starting from an initial ab initio molecular dynamics (AIMD) dataset, local atomic environments are described by SOAP descriptors and analyzed in a reduced feature space obtained through principal component analysis. Farthest point sampling is then used to build a compact training set, and the resulting Deep Potential model is refined through a query-by-committee active-learning strategy using additional…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Chemical Physics Studies · Protein Structure and Dynamics
