Representing potential energy surfaces by high-dimensional neural network potentials

Volume: 26, Issue: 18, Pages: 183001 - 183001
Published: Apr 23, 2014
Abstract
The development of interatomic potentials employing artificial neural networks has seen tremendous progress in recent years. While until recently the applicability of neural network potentials (NNPs) has been restricted to low-dimensional systems, this limitation has now been overcome and high-dimensional NNPs can be used in large-scale molecular dynamics simulations of thousands of atoms. NNPs are constructed by adjusting a set of parameters...
Paper Details
Title
Representing potential energy surfaces by high-dimensional neural network potentials
Published Date
Apr 23, 2014
Volume
26
Issue
18
Pages
183001 - 183001
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