Bulletin of the American Physical Society
APS March Meeting 2022
Volume 67, Number 3
Monday–Friday, March 14–18, 2022; Chicago
Session T49: Emerging Trends in Molecular Dynamics Simulations and Machine Learning IV
11:30 AM–2:30 PM,
Thursday, March 17, 2022
Room: McCormick Place W-471B
Sponsoring
Units:
DCOMP GDS DSOFT DPOLY
Chair: Ken-ichi Nomura, University of Southern California
Abstract: T49.00011 : Davis Computational Spectroscopy workflow - from structure to spectra
1:54 PM–2:06 PM
Presenter:
Lucas Cavalcante
(University of California, Davis)
Authors:
Lucas Cavalcante
(University of California, Davis)
Luke L Daemen
(Oak Ridge National Lab)
Nir Goldman
(Lawrence Livermore Natl Lab)
Ambarish Kulkarni
(University of California, Davis)
Adam Moule
(UC Davis)
Inelastic Neutron Scattering (INS) has been proven to be a good ally in the investigation of structural and dynamic disorder but it requires detailed modeling of the system to characterize peak positions and intensities, and subsequently materials properties. The high computational cost of the electronic modeling has limited investigations with INS to crystalline materials, dampening the study of disordered large systems such as MOFs.
To address the trade-off between simulation cost and accuracy, we developed an automated workflow that connects various atomic simulation tools in order to investigate the relationship between material properties, lattice dynamics, and INS spectra. This workflow allows an accurate and efficient method of calculating phonon modes and the INS spectrum with the use of a broad range of quantum mechanical approximations. We have implemented a machine-learned force field based on Chebyshev polynomials to improve the accuracy of the DFTB simulations with a 100x reduction in computational expense while retaining most of the accuracy of DFT. Besides the benefits of a tool that automates the simulation and consequent analysis of the INS spectrum, our efforts expand the possibilities of investigating more complex structures that would be unfeasible with ab initio methods.
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