Abstract
The conventional design process for metasurfaces is time-consuming and
computationally expensive. To address this challenge, we utilize a
deep convolutional generative adversarial network (DCGAN) to generate
new nanohole metastructure designs that match a desired transmittance
spectrum in the visible range. The trained DCGAN model demonstrates an
exceptional performance in generating diverse and manufacturable
metastructure designs that closely resemble the target optical
properties. The proposed method provides several advantages over
existing approaches. These include its capability to generate new
designs without prior knowledge or assumptions regarding the
relationship between metastructure geometries and optical properties,
its high efficiency, and its generalizability to other types of
metamaterials. The successful fabrication and experimental
characterization of the predicted metastructures further validate the
accuracy and effectiveness of our proposed method.
Funder
Hyundai Motor Group
Ministry of Science and ICT, South
Korea