Using Reinforcement Learning to Optimize Crystal Structure Determination
ORAL
Abstract
The first step to understanding the microscopic origins of the properties of a material is to determine the crystal structure. This can be accomplished with neutron diffraction. However, there are a small number of neutron sources in the world and thus it is critical to perform measurements as optimally as possible. We use reinforcement learning to address this problem. We compare several approaches within this framework including epsilon-greedy, Q-learning, and actor-critic. We find that in toy models, it is possible to measure a significantly smaller fraction of measurements than would commonly be performed to determine structural properties with the same accuracy.
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Presenters
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William Ratcliff
National Institute of Standards and Technology, NIST Center for Neutron Research
Authors
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William Ratcliff
National Institute of Standards and Technology, NIST Center for Neutron Research
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Paul Kienzle
National Institute of Standards and Technology
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Kate Meuse
Cornell
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Jessica Opsahl-Ong
Rice University
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Ryan Cho
Princeton
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Joseph Rath
Rowan University
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Abigail Wilson
Tufts University
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Telon Yan
University of Maryland