Active Learning A Neural Network Model For Gold Clusters \& Bulk From Sparse First Principles Training Data
Troy D Loeffler, Sukriti Manna, Tarak K Patra, Henry Chan, Badri, Narayanan, and Subramanian Sankaranarayanan

TL;DR
This paper presents an active learning approach to efficiently train neural network potentials for gold clusters using minimal first-principles data, accurately capturing size-dependent properties and dynamics.
Contribution
The study introduces a novel active learning scheme that trains neural network potentials on-the-fly with sparse data, significantly reducing the required reference calculations.
Findings
Neural network models trained with ~500 reference calculations achieve high accuracy.
The active learning workflow effectively captures size-dependent structural and dynamical properties.
Predictions closely match DFT calculations and experimental data.
Abstract
Small metal clusters are of fundamental scientific interest and of tremendous significance in catalysis. These nanoscale clusters display diverse geometries and structural motifs depending on the cluster size; a knowledge of this size-dependent structural motifs and their dynamical evolution has been of longstanding interest. Classical MD typically employ predefined functional forms which limits their ability to capture such complex size-dependent structural and dynamical transformation. Neural Network (NN) based potentials represent flexible alternatives and in principle, well-trained NN potentials can provide high level of flexibility, transferability and accuracy on-par with the reference model used for training. A major challenge, however, is that NN models are interpolative and requires large quantities of training data to ensure that the model adequately samples the energy…
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