Presentation
26 August 2020 Machine learning frameworks for the inverse design of highly complicated multi-functional metasystems
Author Affiliations +
Abstract
To fully unlock the capacity of engineered optical media, metadevices and metasystems are exploited with progressively greater complexity, including those with arbitrarily complicated topology, spatially variant building blocks, and multi-layered configurations. The astronomical degrees of freedom associated with such structures have obstructed effective design of them based on the conventional wisdom. Here we present a series of machine learning frameworks, consolidating deep neural networks, evolutionary strategy, and advanced patter generation methods for the inverse design of meta-structures in response to on-demand optical properties, with extensive case studies for multiplexed wavefront control, holography, and optical computing.
Conference Presentation
© (2020) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Wenshan Cai "Machine learning frameworks for the inverse design of highly complicated multi-functional metasystems", Proc. SPIE 11460, Metamaterials, Metadevices, and Metasystems 2020, 1146017 (26 August 2020); https://doi.org/10.1117/12.2567237
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KEYWORDS
Machine learning

Astronomy

Holography

Multiplexing

Neural networks

Optical computing

Optical design

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