Leveraging machine learning to determine nanoscale structures from theory and experiments
ORAL
Abstract
Determining the atomistic details of nanoscale structures is a fundamental problem. Although there are both experimental and computational methods to determine these nanoscale structures, they both possess limitations. We develop the FANTASTX code (Fully Automated Nanoscale To Atomistic Structure from Theory and eXperiment) to overcome the limitations of either by combining both experimental and computational data using machine learning techniques. We demonstrate the effectiveness of FANTASTX by determining the structures of nanoparticles and solid interfaces from x-ray and electron microscopy data combined with atomistic and first principles energies, using multi-objective optimization and a variety of canonical and grand canonical sampling algorithms.
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Presenters
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Maria Chan
Argonne Natl Lab, Center for Nanoscale Materials, Argonne National Laboratory
Authors
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Venkata Surya Chaitanya Kolluru
Argonne Natl Lab
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Spencer Hills
Argonne Natl Lab
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Eric Schwenker
Argonne Natl Lab
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Nobuya Watanabe
Argonne Natl Lab
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Fatih G Sen
Argonne Natl Lab
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Arun Kumar Mannodi Kanakkithodi
Argonne Natl Lab
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Michael Sternberg
Argonne Natl Lab
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Maria Chan
Argonne Natl Lab, Center for Nanoscale Materials, Argonne National Laboratory