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Score-based denoising for atomic structure identification
by
Bertin, Nicolas
, Park, Cheol Woo
, Bulatov, Vasily
, Sadigh, Babak
, Chapman, James
, Zhou, Fei
, Hsu, Tim
in
639/301/1034
/ 639/301/119/1002
/ Atomic structure
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Classification
/ Computational Intelligence
/ Crystal defects
/ Crystal lattices
/ Crystal structure
/ MATERIALS SCIENCE
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Melting points
/ Noise reduction
/ Simulation
/ Structure-function relationships
/ Template matching
/ Theoretical
/ Thermal simulation
/ Vibrations
2024
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Score-based denoising for atomic structure identification
by
Bertin, Nicolas
, Park, Cheol Woo
, Bulatov, Vasily
, Sadigh, Babak
, Chapman, James
, Zhou, Fei
, Hsu, Tim
in
639/301/1034
/ 639/301/119/1002
/ Atomic structure
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Classification
/ Computational Intelligence
/ Crystal defects
/ Crystal lattices
/ Crystal structure
/ MATERIALS SCIENCE
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Melting points
/ Noise reduction
/ Simulation
/ Structure-function relationships
/ Template matching
/ Theoretical
/ Thermal simulation
/ Vibrations
2024
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Do you wish to request the book?
Score-based denoising for atomic structure identification
by
Bertin, Nicolas
, Park, Cheol Woo
, Bulatov, Vasily
, Sadigh, Babak
, Chapman, James
, Zhou, Fei
, Hsu, Tim
in
639/301/1034
/ 639/301/119/1002
/ Atomic structure
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Classification
/ Computational Intelligence
/ Crystal defects
/ Crystal lattices
/ Crystal structure
/ MATERIALS SCIENCE
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Melting points
/ Noise reduction
/ Simulation
/ Structure-function relationships
/ Template matching
/ Theoretical
/ Thermal simulation
/ Vibrations
2024
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Journal Article
Score-based denoising for atomic structure identification
2024
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Overview
We propose an effective method for removing thermal vibrations that complicate the task of analyzing complex dynamics in atomistic simulation of condensed matter. Our method iteratively subtracts thermal noises or perturbations in atomic positions using a denoising score function trained on synthetically noised but otherwise perfect crystal lattices. The resulting denoised structures clearly reveal underlying crystal order while retaining disorder associated with crystal defects. Purely geometric, agnostic to interatomic potentials, and trained without inputs from explicit simulations, our denoiser can be applied to simulation data generated from vastly different interatomic interactions. The denoiser is shown to improve existing classification methods, such as common neighbor analysis and polyhedral template matching, reaching perfect classification accuracy on a recent benchmark dataset of thermally perturbed structures up to the melting point. Demonstrated here in a wide variety of atomistic simulation contexts, the denoiser is general, robust, and readily extendable to delineate order from disorder in structurally and chemically complex materials.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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