Comparing the expense and accuracy of methods to simulate atomic vibrations in rubrene.
ORAL
Abstract
Atomic vibrations can inform about materials properties from hole transport in organic semiconductors to correlated disorder in metal-organic frameworks. Currently, there are several methods for predicting these vibrations using simulations, but the accuracy-efficiency tradeoffs have not been examined in depth. In this study, rubrene was used as a model system to predict atomic vibrational properties using six different simulation methods: Density Functional Theory, Density Functional Tight Binding, a Machine Learning model based on a trained Neural Net, the pre-trained ANI-1 Machine Learning method, a Molecular Dynamics-based method, and Density Functional Tight Binding with a Chebyshev polynomial-based correction. The accuracy of each method is evaluated by comparison to the experimental inelastic neutron scattering spectrum. All methods discussed here show some accuracy across a wide energy region, though the Chebyshev-corrected tight binding method showed the optimal combination of high accuracy with low expense. We then offer broad simulation guidelines to yield efficient, accurate results for inelastic neutron scattering spectrum prediction.
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Publication: Submitted to Journal of Chemical Theory and Computation: Comparing the expense and accuracy of methods to simulate atomic vibrations in rubrene
Presenters
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Makena A Dettmann
UC Davis
Authors
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Makena A Dettmann
UC Davis
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Lucas Cavalcante
University of California, Davis
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Corina Magdaleno
UC Davis
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Karina Masalkovaite
UC Davis
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Daniel Vong
UC Davis
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Jordan T Dull
Princeton University
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Barry P Rand
Princeton University
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Luke L Daemen
Oak Ridge National Lab
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Nir Goldman
Lawrence Livermore Natl Lab
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Roland Faller
University of California, Davis
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Adam Moule
UC Davis