학술논문

High-Efficiency Transmissive Tunable Metasurfaces for Binary Cascaded Diffractive Layers
Document Type
Periodical
Source
IEEE Transactions on Antennas and Propagation IEEE Trans. Antennas Propagat. Antennas and Propagation, IEEE Transactions on. 72(5):4532-4540 May, 2024
Subject
Fields, Waves and Electromagnetics
Aerospace
Transportation
Components, Circuits, Devices and Systems
Metasurfaces
Neurons
Optical diffraction
Diffraction
Optimization
Artificial neural networks
Optical imaging
Binary diffractive deep neural network
holographic image generation
multifocusing
tunable transmissive metasurfaces
Language
ISSN
0018-926X
1558-2221
Abstract
Recently, there has been a surge of interest in implementing neural networks on wave-based physical platforms due to the superior capability of parallel processing at the speed of light, spawning it complementary to conventional electronic computing. Metasurfaces-based cascaded diffractive layers are one of the representative wave-based computing modalities. However, most existing works rely on passive diffractive components, and the enormous network parameters and sufficient computing resources pose a great roadblock. Another dilemma lies in the experimental realization, in which the design of tunable transmissive metasurfaces is arduous. Here, we propose binary cascaded diffractive layers by applying tunable transmissive metasurfaces with opposite phases and a transmission efficiency of 96%. Our discrete optimization algorithm reduces computational redundancy during the training process and becomes more suitable for deployment in mobile applications, thus preserving network inference accuracy while avoiding heavy computational tasks and memory consumption. By optimizing the transmission state of each neuron, our system can achieve multiple functions on demand, such as a multichannel transmission system and holographic image generation. To validate the feasibility, we fabricated two-layer binary cascaded diffractive layers and tested it using a multichannel transmitter. Our study provides a simple, yet viable way for on-site learning due to its high-efficiency metasurface design and low computing requirement.