Spatially Resolved Uncertainties for Machine Learning Potentials
Esther Heid,
Johannes Schörghuber,
Ralf Wanzenböck
et al.
Abstract:Machine learning potentials have become an essential
tool for atomistic
simulations, yielding results close to ab initio simulations at a
fraction of computational cost. With recent improvements on the achievable
accuracies, the focus has now shifted on the data set composition
itself. The reliable identification of erroneously predicted configurations
to extend a given data set is therefore of high priority. Yet, uncertainty
estimation techniques have achieved mixed results for machine learning
potentials. Co… Show more
The investigation of inhomogeneous surfaces, where various local structures coexist, is crucial for understanding interfaces of technological interest, yet it presents significant challenges. Here, we study the atomic configurations of...
The investigation of inhomogeneous surfaces, where various local structures coexist, is crucial for understanding interfaces of technological interest, yet it presents significant challenges. Here, we study the atomic configurations of...
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