| Literature DB >> 31314492 |
Jiaqi Jiang1, David Sell2, Stephan Hoyer3, Jason Hickey3, Jianji Yang1, Jonathan A Fan1.
Abstract
A key challenge in metasurface design is the development of algorithms that can effectively and efficiently produce high-performance devices. Design methods based on iterative optimization can push the performance limits of metasurfaces, but they require extensive computational resources that limit their implementation to small numbers of microscale devices. We show that generative neural networks can train from images of periodic, topology-optimized metagratings to produce high-efficiency, topologically complex devices operating over a broad range of deflection angles and wavelengths. Further iterative optimization of these designs yields devices with enhanced robustness and efficiencies, and these devices can be utilized as additional training data for network refinement. In this manner, generative networks can be trained, with a one-time computation cost, and used as a design tool to facilitate the production of near-optimal, topologically complex device designs. We envision that such data-driven design methodologies can apply to other physical sciences domains that require the design of functional elements operating across a wide parameter space.Keywords: computational efficiency; deep learning; generative adversarial networks; metagrating; topology optimization
Year: 2019 PMID: 31314492 DOI: 10.1021/acsnano.9b02371
Source DB: PubMed Journal: ACS Nano ISSN: 1936-0851 Impact factor: 15.881