TL;DR
This paper introduces a GPR-augmented neural network potential training method that efficiently incorporates force data, reducing computational costs while maintaining high accuracy for complex material interfaces.
Contribution
The authors develop a novel GPR-ANN training approach that generates synthetic energy data from force information, improving efficiency and scalability in modeling complex interfaces.
Findings
Achieves accuracy comparable to force-trained ANNs
Reduces computational overhead significantly
Enhances scalability for complex heterogeneous environments
Abstract
Artificial neural network (ANN) potentials enable highly accurate atomistic simulations of complex materials at unprecedented scales. Despite their promise, training ANN potentials to represent intricate potential energy surfaces (PES) with transferability to diverse chemical environments remains computationally intensive, especially when atomic force data are incorporated to improve PES gradients. Here, we present an efficient ANN potential training methodology that uses Gaussian process regression (GPR) to incorporate atomic forces into ANN training, leading to accurate PES models with fewer additional first-principles calculations and a reduced computational effort for training. Our GPR-ANN approach generates synthetic energy data from force information in the reference dataset, thus augmenting the training datasets and bypassing direct force training. Benchmark tests on hybrid…
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