2 results match your criteria: "Materials Science and Engineering The Ohio State University Columbus OH43212 USA.[Affiliation]"

Integrating machine learning interatomic potentials with hybrid reverse Monte Carlo structure refinements in .

J Appl Crystallogr

December 2024

Neutron Science Division Oak Ridge National Laboratory Oak Ridge TN37831 USA.

Structure refinement with reverse Monte Carlo (RMC) is a powerful tool for interpreting experimental diffraction data. To ensure that the under-constrained RMC algorithm yields reasonable results, the hybrid RMC approach applies interatomic potentials to obtain solutions that are both physically sensible and in agreement with experiment. To expand the range of materials that can be studied with hybrid RMC, we have implemented a new interatomic potential constraint in that grants flexibility to apply potentials supported by the () molecular dynamics code.

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Polymer-derived ceramics (PDCs) remain at the forefront of research for a variety of applications including ultra-high-temperature ceramics, energy storage and functional coatings. Despite their wide use, questions remain about the complex structural transition from polymer to ceramic and how local structure influences the final microstructure and resulting properties. This is further complicated when nanofillers are introduced to tailor structural and functional properties, as nanoparticle surfaces can interact with the matrix and influence the resulting structure.

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