A general-purpose machine learning Pt interatomic potential for an accurate description of bulk, surfaces, and nanoparticles
J Kloppenburg and LB Pártay and H Jónsson and MA Caro, JOURNAL OF CHEMICAL PHYSICS, 158, 134704 (2023).
DOI: 10.1063/5.0143891
A Gaussian approximation machine learning interatomic potential for platinum is presented. It has been trained on density-functional theory (DFT) data computed for bulk, surfaces, and nanostructured platinum, in particular nanoparticles. Across the range of tested properties, which include bulk elasticity, surface energetics, and nanoparticle stability, this potential shows excellent transferability and agreement with DFT, providing state-of-the-art accuracy at a low computational cost. We showcase the possibilities for modeling of Pt systems enabled by this potential with two examples: the pressure-temperature phase diagram of Pt calculated using nested sampling and a study of the spontaneous crystallization of a large Pt nanoparticle based on classical dynamics simulations over several nanoseconds.
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