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Metasurface design optimization via D-Wave based sampling

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Abstract

The developed design framework employs the D-Wave to enable global optimization of meta-devices with complex topologies and material composition. The framework opens up the pathways to solving broad range of highly-constrained optimization problems of nanophotonics.

© 2021 The Author(s)

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