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arxiv: 1505.02701 · v1 · pith:NRYESEMGnew · submitted 2015-05-11 · ❄️ cond-mat.mtrl-sci

A learning scheme to predict atomic forces and accelerate materials simulations

classification ❄️ cond-mat.mtrl-sci
keywords forceatomiccapabilityfieldlearnedmaterialssimulationsaccelerate
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The behavior of an atom in a molecule, liquid or solid is governed by the force it experiences. If the dependence of this vectorial force on the atomic chemical environment can be $learned$ efficiently with high-fidelity from benchmark reference results-using "big data" techniques, i.e., without resorting to actual functional forms-then this capability can be harnessed to enormously speed up $in \ silico$ materials simulations. The present contribution provides several examples of how such a $force$ field for Al can be used to go far beyond the length-scale and time-scale regimes accessible presently using quantum mechanical methods. It is argued that pathways are available to systematically and continuously improve the predictive capability of such a learned force field in an adaptive manner, and that this concept can be generalized to include multiple elements.

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